From 2d8b7dd6ea6ccb0293c8839898cf7a1246dc0eb4 Mon Sep 17 00:00:00 2001 From: Jules Laplace Date: Mon, 1 Apr 2019 14:25:06 +0200 Subject: rebuild --- .../research/01_from_1_to_100_pixels/index.html | 32 ++++++++++++++++++++++ .../research/02_what_computers_can_see/index.html | 19 +++++++++++++ site/public/research/index.html | 18 ++++++++++-- 3 files changed, 67 insertions(+), 2 deletions(-) (limited to 'site/public/research') diff --git a/site/public/research/01_from_1_to_100_pixels/index.html b/site/public/research/01_from_1_to_100_pixels/index.html index c91d17ad..37fc367f 100644 --- a/site/public/research/01_from_1_to_100_pixels/index.html +++ b/site/public/research/01_from_1_to_100_pixels/index.html @@ -80,6 +80,38 @@
  • "Note that we only keep the images with a minimal side length of 80 pixels." and "a face will be labeled as “Ignore” if it is very difficult to be detected due to blurring, severe deformation and unrecognizable eyes, or the side length of its bounding box is less than 32 pixels." Ge_Detecting_Masked_Faces_CVPR_2017_paper.pdf
  • IBM DiF: "Faces with region size less than 50x50 or inter-ocular distance of less than 30 pixels were discarded. Faces with non-frontal pose, or anything beyond being slightly tilted to the left or the right, were also discarded."
  • +

    As the resolution +formatted as rectangular databases of 16 bit RGB-tuples or 8 bit grayscale values

    +

    To consider how visual privacy applies to real world surveillance situations, the first

    +

    A single 8-bit grayscale pixel with 256 values is enough to represent the entire alphabet a-Z0-9 with room to spare.

    +

    A 2x2 pixels contains

    +

    Using no more than a 42 pixel (6x7 image) face image researchers [cite] were able to correctly distinguish between a group of 50 people. Yet

    +

    The likely outcome of face recognition research is that more data is needed to improve. Indeed, resolution is the determining factor for all biometric systems, both as training data to increase

    +

    Pixels, typically considered the buiding blocks of images and vidoes, can also be plotted as a graph of sensor values corresponding to the intensity of RGB-calibrated sensors.

    +

    Wi-Fi and cameras presents elevated risks for transmitting videos and image documentation from conflict zones, high-risk situations, or even sharing on social media. How can new developments in computer vision also be used in reverse, as a counter-forensic tool, to minimize an individual's privacy risk?

    +

    As the global Internet becomes increasingly effecient at turning the Internet into a giant dataset for machine learning, forensics, and data analysing, it would be prudent to also consider tools for decreasing the resolution. The Visual Defense module is just that. What are new ways to minimize the adverse effects of surveillance by dulling the blade. For example, a researcher paper showed that by decreasing a face size to 12x16 it was possible to do 98% accuracy with 50 people. This is clearly an example of

    +

    This research module, tentatively called Visual Defense Tools, aims to explore the

    +

    Prior Research

    + +

    Notes

    + +

    What all 3 examples illustrate is that face recognition is anything but absolute. In a 2017 talk, Jason Matheny the former directory of IARPA, admitted the face recognition is so brittle it can be subverted by using a magic marker and drawing "a few dots on your forehead". In fact face recognition is a misleading term. Face recognition is search engine for faces that can only ever show you the mos likely match. This presents real a real threat to privacy and lends

    +

    Globally, iPhone users unwittingly agree to 1/1,000,000 probably +relying on FaceID and TouchID to protect their information agree to a


    1. NIST 906932. Performance Assessment of Face Recognition Using Super-Resolution. Shuowen Hu, Robert Maschal, S. Susan Young, Tsai Hong Hong, Jonathon P. Phillips

    2. diff --git a/site/public/research/02_what_computers_can_see/index.html b/site/public/research/02_what_computers_can_see/index.html index 9389bf84..0fce1373 100644 --- a/site/public/research/02_what_computers_can_see/index.html +++ b/site/public/research/02_what_computers_can_see/index.html @@ -126,6 +126,7 @@
    3. Wearing Necktie
    4. Wearing Necklace
    5. +

      for i in {1..9};do wget http://visiond1.cs.umbc.edu/webpage/codedata/ADLdataset/ADL_videos/P_0$i.MP4;done;for i in {10..20}; do wget http://visiond1.cs.umbc.edu/webpage/codedata/ADLdataset/ADL_videos/P_$i.MP4;done

      From Market 1501

      The 27 attributes are:

      @@ -269,6 +270,24 @@ Visibility boolean for each keypoint Region annotations (upper clothes, lower clothes, dress, socks, shoes, hands, gloves, neck, face, hair, hat, sunglasses, bag, occluder) Body type (male, female or child)

      source: https://www2.eecs.berkeley.edu/Research/Projects/CS/vision/shape/h3d/

      +

      From Leeds Sports Pose

      +

      =INDEX(A2:A9,MATCH(datasets!D1,B2:B9,0)) +=VLOOKUP(A2, datasets!A:J, 7, FALSE)

      +

      Right ankle +Right knee +Right hip +Left hip +Left knee +Left ankle +Right wrist +Right elbow +Right shoulder +Left shoulder +Left elbow +Left wrist +Neck +Head top

      +

      source: http://web.archive.org/web/20170915023005/sam.johnson.io/research/lsp.html

      diff --git a/site/public/research/index.html b/site/public/research/index.html index 303732f8..0ef57043 100644 --- a/site/public/research/index.html +++ b/site/public/research/index.html @@ -26,8 +26,22 @@
      -

      Research Blog

      -
      +
      +

      Research

      +
      +
      +
      Posted
      +
      2018-12-15
      +
      +
      +
      By
      +
      Adam Harvey
      +
      + +
      +
      + +
      -- cgit v1.2.3-70-g09d2 From 07dd05f733c8618ea8dc687f7a48a7add6f5a83b Mon Sep 17 00:00:00 2001 From: Jules Laplace Date: Mon, 1 Apr 2019 14:42:20 +0200 Subject: fix --- megapixels/app/site/loader.py | 5 +- scraper/client/paper/paper.verify.js | 11 +-- .../datasets/50_people_one_question/index.html | 25 +++---- site/public/datasets/brainwash/index.html | 78 +++++++++++----------- site/public/datasets/celeba/index.html | 25 +++---- site/public/datasets/cofw/index.html | 28 ++++---- site/public/datasets/duke_mtmc/index.html | 50 +++++++------- site/public/datasets/hrt_transgender/index.html | 37 +++++----- site/public/datasets/lfw/index.html | 37 +++++----- site/public/datasets/market_1501/index.html | 25 +++---- site/public/datasets/msceleb/index.html | 37 +++++----- site/public/datasets/pipa/index.html | 25 +++---- site/public/datasets/uccs/index.html | 52 +++++++-------- site/public/datasets/viper/index.html | 37 +++++----- site/public/research/index.html | 18 +---- 15 files changed, 223 insertions(+), 267 deletions(-) (limited to 'site/public/research') diff --git a/megapixels/app/site/loader.py b/megapixels/app/site/loader.py index d150942c..779f68ba 100644 --- a/megapixels/app/site/loader.py +++ b/megapixels/app/site/loader.py @@ -85,9 +85,8 @@ def parse_metadata(fn, sections): metadata['meta'] = load_json(dataset_path) if not metadata['meta']: print("Bad metadata? {}".format(dataset_path)) - else: - print(metadata['slug']) - print("{} does not exist!".format(dataset_path)) + elif 'datasets' in fn: + print("/!\\ {} does not exist!".format(dataset_path)) if 'meta' not in metadata or not metadata['meta']: # dude metadata['meta'] = {} diff --git a/scraper/client/paper/paper.verify.js b/scraper/client/paper/paper.verify.js index fcebac02..25117ff1 100644 --- a/scraper/client/paper/paper.verify.js +++ b/scraper/client/paper/paper.verify.js @@ -52,7 +52,7 @@ class PaperVerify extends Component { let newState = {} if (oldSha256 && sha256 !== oldSha256) { - console.log('update verification') + // console.log('update verification') this.props.actions.getAddress(sha256) this.props.actions.getVerification(sha256) const citationState = this.getCitationState(sha256) @@ -60,7 +60,7 @@ class PaperVerify extends Component { ...initialState, ...citationState, ...address.paper, - pdfIndex: citationState.citations.pdf.findIndex(el => el.pdf.match(/^http:/)), + pdfIndex: citationState.citation.pdf.findIndex(el => el.match(/^https:/)), } this.setState(newState) } else if (verify && !verify.loading && verify.paper && (!oldPaper || oldPaper !== verify.paper)) { @@ -71,7 +71,7 @@ class PaperVerify extends Component { ...initialState, ...citationState, ...address.paper, - pdfIndex: citationState.citations.pdf.findIndex(el => el.pdf.match(/^http:/)), + pdfIndex: citationState.citation.pdf.findIndex(el => el.match(/^https:/)), } this.setState(newState) } else { @@ -81,7 +81,7 @@ class PaperVerify extends Component { newState = { ...citationState, ...address.paper, - pdfIndex: citationState.citations.pdf.findIndex(el => el.pdf.match(/^http:/)), + pdfIndex: citationState.citation.pdf.findIndex(el => el.match(/^https:/)), uses_dataset: paper.uses_dataset, images_in_paper: paper.images_in_paper, verified_by: paper.verified_by, @@ -170,7 +170,8 @@ class PaperVerify extends Component { const { paperInfo, sortedCitations } = this.props.api const citations = sortedCitations || paperInfo.citations || [] let citationIndex = citations.findIndex(f => f.id === this.state.citation.id) - + console.log(sortedCitations) + console.log('going to next', key, citationIndex) if (citationIndex === -1) { history.push('/paper/' + key + '/info/') } else { diff --git a/site/public/datasets/50_people_one_question/index.html b/site/public/datasets/50_people_one_question/index.html index 988ce2dc..8e3d2d2b 100644 --- a/site/public/datasets/50_people_one_question/index.html +++ b/site/public/datasets/50_people_one_question/index.html @@ -33,7 +33,7 @@

      Nam libero tempore, cum soluta nobis est eligendi optio, cumque nihil impedit, quo minus id, quod maxime placeat, facere possimus, omnis voluptas assumenda est, omnis dolor repellendus. Temporibus autem quibusdam et aut officiis debitis aut rerum necessitatibus saepe eveniet, ut et voluptates repudiandae sint et molestiae non-recusandae. Itaque earum rerum hic tenetur a sapiente delectus, ut aut reiciendis voluptatibus maiores alias consequatur aut perferendis doloribus asperiores repellat

      -

      Information Supply Chain

      +

      Biometric Trade Routes

      - To understand how 50 People One Question Dataset has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how 50 People One Question Dataset has been used around the world for commercial, military and academic research; publicly available research citing 50 People One Question is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

      -
      +
      +
      • Academic
      • -
      • Industry
      • -
      • Government / Military
      • +
      • Commercial
      • +
      • Military / Government
      • Citation data is collected using SemanticScholar.org then dataset usage verified and geolocated.
      -
      +
      @@ -76,13 +77,13 @@
      -

      Supplementary Information

      +

      Supplementary Information

      +
      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/datasets/brainwash/index.html b/site/public/datasets/brainwash/index.html index 20f2f096..c97349aa 100644 --- a/site/public/datasets/brainwash/index.html +++ b/site/public/datasets/brainwash/index.html @@ -4,7 +4,7 @@ MegaPixels - + @@ -26,18 +26,16 @@

      -
      Brainwash is a dataset of webcam images taken from the Brainwash Cafe in San Francisco
      The Brainwash dataset includes 11,918 images of "everyday life of a busy downtown cafe" and is used for training head detection algorithms -

      Brainwash Dataset

      -

      (PAGE UNDER DEVELOPMENT)

      -

      Brainwash is a face detection dataset created from the Brainwash Cafe's livecam footage including 11,918 images of "everyday life of a busy downtown cafe 1". The images are used to develop face detection algorithms for the "challenging task of detecting people in crowded scenes" and tracking them.

      -

      Before closing in 2017, Brainwash Cafe was a "cafe and laundromat" located in San Francisco's SoMA district. The cafe published a publicy available livestream from the cafe with a view of the cash register, performance stage, and seating area.

      -

      Since it's publication by Stanford in 2015, the Brainwash dataset has appeared in several notable research papers. In September 2016 four researchers from the National University of Defense Technology in Changsha, China used the Brainwash dataset for a research study on "people head detection in crowded scenes", concluding that their algorithm "achieves superior head detection performance on the crowded scenes dataset 2". And again in 2017 three researchers at the National University of Defense Technology used Brainwash for a study on object detection noting "the data set used in our experiment is shown in Table 1, which includes one scene of the brainwash dataset 3".

      -
       An sample image from the Brainwash dataset used for training face and head detection algorithms for surveillance. The datset contains about 12,000 images. License: Open Data Commons Public Domain Dedication (PDDL)
      An sample image from the Brainwash dataset used for training face and head detection algorithms for surveillance. The datset contains about 12,000 images. License: Open Data Commons Public Domain Dedication (PDDL)
       49 of the 11,918 images included in the Brainwash dataset. License: Open Data Commons Public Domain Dedication (PDDL)
      49 of the 11,918 images included in the Brainwash dataset. License: Open Data Commons Public Domain Dedication (PDDL)
      +
      Brainwash is a dataset of webcam images taken from the Brainwash Cafe in San Francisco in 2014
      The Brainwash dataset includes 11,918 images of "everyday life of a busy downtown cafe" and is used for training head detection surveillance algorithms +

      Brainwash Dataset

      +

      Brainwash is a head detection dataset created from San Francisco's Brainwash Cafe livecam footage. It includes 11,918 images of "everyday life of a busy downtown cafe" 1 captured at 100 second intervals throught the entire day. Brainwash dataset was captured during 3 days in 2014: October 27, November 13, and November 24. According the author's reserach paper introducing the dataset, the images were acquired with the help of Angelcam.com [cite orig paper].

      +

      Brainwash is not a widely used dataset but since its publication by Stanford University in 2015, it has notably appeared in several research papers from the National University of Defense Technology in Changsha, China. In 2016 and in 2017 researchers there conducted studies on detecting people's heads in crowded scenes for the purpose of surveillance 2 3.

      +

      If you happen to have been at Brainwash cafe in San Franscisco at any time on October 26, November 13, or November 24 in 2014 you are most likely included in the Brainwash dataset.

      +
       The pixel-averaged image of all Brainwash dataset images is shown with 81,973 head annotations drawn from the Brainwash training partition. (c) Adam Harvey
      The pixel-averaged image of all Brainwash dataset images is shown with 81,973 head annotations drawn from the Brainwash training partition. (c) Adam Harvey

      Who used Brainwash Dataset?

      - This bar chart presents a ranking of the top countries where citations originated. Mouse over individual columns - to see yearly totals. These charts show at most the top 10 countries. + This bar chart presents a ranking of the top countries where dataset citations originated. Mouse over individual columns to see yearly totals. These charts show at most the top 10 countries.

      @@ -46,18 +44,11 @@
      -
      -

      - These pie charts show overall totals based on country and institution type. -

      - -
      - -
      +
      -

      Information Supply Chain

      +

      Biometric Trade Routes

      - To understand how Brainwash Dataset has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how Brainwash Dataset has been used around the world for commercial, military and academic research; publicly available research citing Brainwash Dataset is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

      -
      +
      +
      • Academic
      • -
      • Industry
      • -
      • Government / Military
      • +
      • Commercial
      • +
      • Military / Government
      • Citation data is collected using SemanticScholar.org then dataset usage verified and geolocated.
      -
      +
      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter.

      -

      Additional Information

      +
      + + +
      +
      +
      +
      + +

      Supplementary Information

      + +
       An sample image from the Brainwash dataset used for training face and head detection algorithms for surveillance. The datset contains about 12,000 images. License: Open Data Commons Public Domain Dedication (PDDL)
      An sample image from the Brainwash dataset used for training face and head detection algorithms for surveillance. The datset contains about 12,000 images. License: Open Data Commons Public Domain Dedication (PDDL)
       49 of the 11,918 images included in the Brainwash dataset. License: Open Data Commons Public Domain Dedication (PDDL)
      49 of the 11,918 images included in the Brainwash dataset. License: Open Data Commons Public Domain Dedication (PDDL)

      Additional Resources

      +

      TODO

      +
        +
      • add bounding boxes to the header image
      • +
      • remake montage with randomized images, with bboxes
      • +
      • clean up intro text
      • +
      • verify quote citations
      • +
      • a

        "readme.txt" https://exhibits.stanford.edu/data/catalog/sx925dc9385.

      • a

        Li, Y. and Dou, Y. and Liu, X. and Li, T. Localized Region Context and Object Feature Fusion for People Head Detection. ICIP16 Proceedings. 2016. Pages 594-598.

      • a

        Zhao. X, Wang Y, Dou, Y. A Replacement Algorithm of Non-Maximum Suppression Base on Graph Clustering.

        diff --git a/site/public/datasets/celeba/index.html b/site/public/datasets/celeba/index.html index 07522561..e958cbef 100644 --- a/site/public/datasets/celeba/index.html +++ b/site/public/datasets/celeba/index.html @@ -33,7 +33,7 @@

        Nam libero tempore, cum soluta nobis est eligendi optio, cumque nihil impedit, quo minus id, quod maxime placeat, facere possimus, omnis voluptas assumenda est, omnis dolor repellendus. Temporibus autem quibusdam et aut officiis debitis aut rerum necessitatibus saepe eveniet, ut et voluptates repudiandae sint et molestiae non-recusandae. Itaque earum rerum hic tenetur a sapiente delectus, ut aut reiciendis voluptatibus maiores alias consequatur aut perferendis doloribus asperiores repellat

      -

      Information Supply Chain

      +

      Biometric Trade Routes

      - To understand how CelebA Dataset has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how CelebA Dataset has been used around the world for commercial, military and academic research; publicly available research citing Large-scale CelebFaces Attributes Dataset is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

      -
      +
      +
      • Academic
      • -
      • Industry
      • -
      • Government / Military
      • +
      • Commercial
      • +
      • Military / Government
      • Citation data is collected using SemanticScholar.org then dataset usage verified and geolocated.
      -
      +
      @@ -76,13 +77,13 @@
      -

      Supplementary Information

      +

      Supplementary Information

      +
      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/datasets/cofw/index.html b/site/public/datasets/cofw/index.html index 99d4a9ef..7ac30579 100644 --- a/site/public/datasets/cofw/index.html +++ b/site/public/datasets/cofw/index.html @@ -43,7 +43,7 @@ To increase the number of training images, and since COFW has the exact same la

      https://www.cs.cmu.edu/~peiyunh/topdown/

      -

      Information Supply Chain

      +

      Biometric Trade Routes

      - To understand how COFW Dataset has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how COFW Dataset has been used around the world for commercial, military and academic research; publicly available research citing Caltech Occluded Faces in the Wild is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

      -
      +
      +
      • Academic
      • -
      • Industry
      • -
      • Government / Military
      • +
      • Commercial
      • +
      • Military / Government
      • Citation data is collected using SemanticScholar.org then dataset usage verified and geolocated.
      -
      +
      @@ -86,13 +87,13 @@ To increase the number of training images, and since COFW has the exact same la
      -

      Supplementary Information

      +

      Supplementary Information

      +
      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. @@ -103,8 +104,7 @@ To increase the number of training images, and since COFW has the exact same la

      Who used COFW Dataset?

      - This bar chart presents a ranking of the top countries where citations originated. Mouse over individual columns - to see yearly totals. These charts show at most the top 10 countries. + This bar chart presents a ranking of the top countries where dataset citations originated. Mouse over individual columns to see yearly totals. These charts show at most the top 10 countries.

      diff --git a/site/public/datasets/duke_mtmc/index.html b/site/public/datasets/duke_mtmc/index.html index 431cf7ff..9664181e 100644 --- a/site/public/datasets/duke_mtmc/index.html +++ b/site/public/datasets/duke_mtmc/index.html @@ -4,7 +4,7 @@ MegaPixels - + @@ -26,12 +26,17 @@
      -
      Duke MTMC is a dataset of CCTV footage of students at Duke University
      Duke MTMC contains over 2 million video frames and 2,000 unique identities collected from 8 cameras at Duke University campus in March 2014 -

      Duke Multi-Target, Multi-Camera Tracking Dataset (Duke MTMC)

      -

      (PAGE UNDER DEVELOPMENT)

      +
      Duke MTMC is a dataset of surveillance camera footage of students on Duke University campus
      Duke MTMC contains over 2 million video frames and 2,000 unique identities collected from 8 HD cameras at Duke University campus in March 2014 +

      Duke Multi-Target, Multi-Camera Tracking Dataset (Duke MTMC)

      +

      [ PAGE UNDER DEVELOPMENT ]

      +

      Duke MTMC is a dataset of video recorded on Duke University campus during for the purpose of training, evaluating, and improving multi-target multi-camera tracking. The videos were recorded during February and March 2014 and cinclude

      +

      Includes a total of 888.8 minutes of video (ind. verified)

      +

      "We make available a new data set that has more than 2 million frames and more than 2,700 identities. It consists of 8×85 minutes of 1080p video recorded at 60 frames per second from 8 static cameras deployed on the Duke University campus during periods between lectures, when pedestrian traffic is heavy."

      +

      The dataset includes approximately 2,000 annotated identities appearing in 85 hours of video from 8 cameras located throughout Duke University's campus.

      +
       Duke MTMC pixel-averaged image of camera #5 is shown with the bounding boxes for each student drawn in white. (c) Adam Harvey
      Duke MTMC pixel-averaged image of camera #5 is shown with the bounding boxes for each student drawn in white. (c) Adam Harvey

      According to the dataset authors,

      -

      Information Supply Chain

      +

      Biometric Trade Routes

      - To understand how Duke MTMC Dataset has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how Duke MTMC Dataset has been used around the world for commercial, military and academic research; publicly available research citing Duke Multi-Target, Multi-Camera Tracking Project is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

      -
      +
      +
      • Academic
      • -
      • Industry
      • -
      • Government / Military
      • +
      • Commercial
      • +
      • Military / Government
      • Citation data is collected using SemanticScholar.org then dataset usage verified and geolocated.
      -
      +

      Who used Duke MTMC Dataset?

      - This bar chart presents a ranking of the top countries where citations originated. Mouse over individual columns - to see yearly totals. These charts show at most the top 10 countries. + This bar chart presents a ranking of the top countries where dataset citations originated. Mouse over individual columns to see yearly totals. These charts show at most the top 10 countries.

      @@ -80,14 +85,7 @@
      -
      -

      - These pie charts show overall totals based on country and institution type. -

      - -
      - -
      +
      @@ -97,13 +95,13 @@
      -

      Supplementary Information

      +

      Supplementary Information

      +
      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/datasets/hrt_transgender/index.html b/site/public/datasets/hrt_transgender/index.html index 7e10c2fb..ed36abb5 100644 --- a/site/public/datasets/hrt_transgender/index.html +++ b/site/public/datasets/hrt_transgender/index.html @@ -32,8 +32,7 @@

      Who used HRT Transgender?

      - This bar chart presents a ranking of the top countries where citations originated. Mouse over individual columns - to see yearly totals. These charts show at most the top 10 countries. + This bar chart presents a ranking of the top countries where dataset citations originated. Mouse over individual columns to see yearly totals. These charts show at most the top 10 countries.

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      Information Supply Chain

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      Biometric Trade Routes

      - To understand how HRT Transgender has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how HRT Transgender has been used around the world for commercial, military and academic research; publicly available research citing HRT Transgender Dataset is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

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      Supplementary Information

      +

      Supplementary Information

      +
      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/datasets/lfw/index.html b/site/public/datasets/lfw/index.html index 9cbf2e11..22384d77 100644 --- a/site/public/datasets/lfw/index.html +++ b/site/public/datasets/lfw/index.html @@ -46,7 +46,7 @@

      The Names and Faces dataset was the first face recognition dataset created entire from online photos. However, Names and Faces and LFW are not the first face recognition dataset created entirely "in the wild". That title belongs to the UCD dataset. Images obtained "in the wild" means using an image without explicit consent or awareness from the subject or photographer.

      -

      Information Supply Chain

      +

      Biometric Trade Routes

      - To understand how LFW has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how LFW has been used around the world for commercial, military and academic research; publicly available research citing Labeled Faces in the Wild is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

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      -
      +

      Who used LFW?

      - This bar chart presents a ranking of the top countries where citations originated. Mouse over individual columns - to see yearly totals. These charts show at most the top 10 countries. + This bar chart presents a ranking of the top countries where dataset citations originated. Mouse over individual columns to see yearly totals. These charts show at most the top 10 countries.

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      Supplementary Information

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      Supplementary Information

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      -

      Citations

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      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/datasets/market_1501/index.html b/site/public/datasets/market_1501/index.html index b7e68c47..9a05d20e 100644 --- a/site/public/datasets/market_1501/index.html +++ b/site/public/datasets/market_1501/index.html @@ -31,7 +31,7 @@

      (PAGE UNDER DEVELOPMENT)

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      Information Supply Chain

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      Biometric Trade Routes

      - To understand how Market 1501 has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how Market 1501 has been used around the world for commercial, military and academic research; publicly available research citing Market 1501 Dataset is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

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      Supplementary Information

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      Supplementary Information

      +
      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/datasets/msceleb/index.html b/site/public/datasets/msceleb/index.html index 50788aad..0ddf0c68 100644 --- a/site/public/datasets/msceleb/index.html +++ b/site/public/datasets/msceleb/index.html @@ -35,8 +35,7 @@

      Who used MsCeleb?

      - This bar chart presents a ranking of the top countries where citations originated. Mouse over individual columns - to see yearly totals. These charts show at most the top 10 countries. + This bar chart presents a ranking of the top countries where dataset citations originated. Mouse over individual columns to see yearly totals. These charts show at most the top 10 countries.

      @@ -45,18 +44,11 @@
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      -

      - These pie charts show overall totals based on country and institution type. -

      - -
      - -
      +
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      Information Supply Chain

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      Biometric Trade Routes

      - To understand how MsCeleb has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how MsCeleb has been used around the world for commercial, military and academic research; publicly available research citing Microsoft Celebrity Dataset is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

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      Add more analysis here

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      Supplementary Information

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      Supplementary Information

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      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/datasets/pipa/index.html b/site/public/datasets/pipa/index.html index 09baca99..9e7eb164 100644 --- a/site/public/datasets/pipa/index.html +++ b/site/public/datasets/pipa/index.html @@ -31,7 +31,7 @@

      (PAGE UNDER DEVELOPMENT)

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      Information Supply Chain

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      Biometric Trade Routes

      - To understand how PIPA Dataset has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how PIPA Dataset has been used around the world for commercial, military and academic research; publicly available research citing People in Photo Albums Dataset is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

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      Supplementary Information

      +

      Supplementary Information

      +
      -

      Citations

      +

      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/datasets/uccs/index.html b/site/public/datasets/uccs/index.html index ca106022..2477c9f8 100644 --- a/site/public/datasets/uccs/index.html +++ b/site/public/datasets/uccs/index.html @@ -4,7 +4,7 @@ MegaPixels - + @@ -26,12 +26,12 @@

      -
      Unconstrained College Students (UCCS) is a dataset of images ...
      The UCCS dataset includes ... -

      Unconstrained College Students ...

      +
      Unconstrained College Students (UCCS) is a dataset of long-range surveillance photos of students taken without their knowledge
      The UCCS dataset includes 16,149 images and 1,732 identities of students at University of Colorado Colorado Springs campus and is used for face recognition and face detection +

      Unconstrained College Students ...

      (PAGE UNDER DEVELOPMENT)

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       The pixel-average of all Uconstrained College Students images is shown with all 51,838 face annotations. (c) Adam Harvey
      The pixel-average of all Uconstrained College Students images is shown with all 51,838 face annotations. (c) Adam Harvey
      -

      Information Supply Chain

      +

      Biometric Trade Routes

      - To understand how UCCS has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how UCCS has been used around the world for commercial, military and academic research; publicly available research citing UnConstrained College Students Dataset is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

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      Who used UCCS?

      - This bar chart presents a ranking of the top countries where citations originated. Mouse over individual columns - to see yearly totals. These charts show at most the top 10 countries. + This bar chart presents a ranking of the top countries where dataset citations originated. Mouse over individual columns to see yearly totals. These charts show at most the top 10 countries.

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      Supplementary Information

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      Supplementary Information

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      Citations

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      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter.

      -
      Bounding box visualization
      Bounding box visualization

      Research Notes

      +

      Research Notes

      The original Sapkota and Boult dataset, from which UCCS is derived, received funding from1:

      • ONR (Office of Naval Research) MURI (The Department of Defense Multidisciplinary University Research Initiative) grant N00014-08-1-0638
      • @@ -123,6 +116,11 @@
      • ODNI (Office of Director of National Intelligence)
      • IARPA (Intelligence Advance Research Projects Activity) R&D contract 2014-14071600012
      +

      " In most face detection/recognition datasets, the majority of images are “posed”, i.e. the subjects know they are being photographed, and/or the images are selected for publication in public media. Hence, blurry, occluded and badly illuminated images are generally uncommon in these datasets. In addition, most of these challenges are close-set, i.e. the list of subjects in the gallery is the same as the one used for testing.

      +

      This challenge explores more unconstrained data, by introducing the new UnConstrained College Students (UCCS) dataset, where subjects are photographed using a long-range high-resolution surveillance camera without their knowledge. Faces inside these images are of various poses, and varied levels of blurriness and occlusion. The challenge also creates an open set recognition problem, where unknown people will be seen during testing and must be rejected.

      +

      With this challenge, we hope to foster face detection and recognition research towards surveillance applications that are becoming more popular and more required nowadays, and where no automatic recognition algorithm has proven to be useful yet.

      +

      UnConstrained College Students (UCCS) Dataset

      +

      The UCCS dataset was collected over several months using Canon 7D camera fitted with Sigma 800mm F5.6 EX APO DG HSM lens, taking images at one frame per second, during times when many students were walking on the sidewalk. "


      1. Sapkota, Archana and Boult, Terrance. "Large Scale Unconstrained Open Set Face Database." 2013.

      2. diff --git a/site/public/datasets/viper/index.html b/site/public/datasets/viper/index.html index f78d1c04..e94568a3 100644 --- a/site/public/datasets/viper/index.html +++ b/site/public/datasets/viper/index.html @@ -35,8 +35,7 @@

        Who used VIPeR?

        - This bar chart presents a ranking of the top countries where citations originated. Mouse over individual columns - to see yearly totals. These charts show at most the top 10 countries. + This bar chart presents a ranking of the top countries where dataset citations originated. Mouse over individual columns to see yearly totals. These charts show at most the top 10 countries.

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      Information Supply Chain

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      Biometric Trade Routes

      - To understand how VIPeR has been used around the world... - affected global research on computer vision, surveillance, defense, and consumer technology, the and where this dataset has been used the locations of each organization that used or referenced the datast + To help understand how VIPeR has been used around the world for commercial, military and academic research; publicly available research citing Viewpoint Invariant Pedestrian Recognition is collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal reserach projects at that location.

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      Supplementary Information

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      Supplementary Information

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      Citations

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      Dataset Citations

      - Citations were collected from Semantic Scholar, a website which aggregates - and indexes research papers. The citations were geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms. + The dataset citations used in the visualizations were collected from Semantic Scholar, a website which aggregates and indexes research papers. Each citation was geocoded using names of institutions found in the PDF front matter, or as listed on other resources. These papers have been manually verified to show that researchers downloaded and used the dataset to train or test machine learning algorithms.

      Add [button/link] to download CSV. Add search input field to filter. diff --git a/site/public/research/index.html b/site/public/research/index.html index 0ef57043..303732f8 100644 --- a/site/public/research/index.html +++ b/site/public/research/index.html @@ -26,22 +26,8 @@

      -
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      Research

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      Posted
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      2018-12-15
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      Adam Harvey
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      Research Blog

      +
      -- cgit v1.2.3-70-g09d2 From 087cf70c944c09c4d03f2fbcaf7c74718ccb5f8f Mon Sep 17 00:00:00 2001 From: Jules Laplace Date: Tue, 2 Apr 2019 14:47:34 +0200 Subject: cursor --- client/table/tabulator.css | 3 ++- site/public/about/faq/index.html | 1 - site/public/about/index.html | 1 - site/public/about/legal/index.html | 1 - site/public/about/press/index.html | 1 - site/public/datasets/50_people_one_question/index.html | 1 - site/public/datasets/afad/index.html | 1 - site/public/datasets/aflw/index.html | 1 - site/public/datasets/brainwash/index.html | 1 - site/public/datasets/caltech_10k/index.html | 1 - site/public/datasets/celeba/index.html | 1 - site/public/datasets/cofw/index.html | 1 - site/public/datasets/duke_mtmc/index.html | 1 - site/public/datasets/facebook/index.html | 1 - site/public/datasets/feret/index.html | 1 - site/public/datasets/hrt_transgender/index.html | 1 - site/public/datasets/index.html | 1 - site/public/datasets/lfpw/index.html | 1 - site/public/datasets/lfw/index.html | 1 - 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42 files changed, 2 insertions(+), 42 deletions(-) (limited to 'site/public/research') diff --git a/client/table/tabulator.css b/client/table/tabulator.css index 17dad62a..9a7ca00e 100644 --- a/client/table/tabulator.css +++ b/client/table/tabulator.css @@ -9,6 +9,7 @@ background-color: #333; } .desktop .tabulator-row.tabulator-selectable:hover { + cursor: text; background-color: #555; } .tabulator-row .tabulator-cell { @@ -35,7 +36,7 @@ max-width: 400px; margin-bottom: 10px; background-image: url(/assets/img/icon-search.png); - background-position: 390px center; + background-position: 380px center; background-repeat: no-repeat; box-shadow: 0px 2px 4px rgba(0,0,0,0.2); border: 0; diff --git a/site/public/about/faq/index.html b/site/public/about/faq/index.html index b86dac22..00e5d719 100644 --- a/site/public/about/faq/index.html +++ b/site/public/about/faq/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/about/index.html b/site/public/about/index.html index 18ad797a..d5d72b04 100644 --- a/site/public/about/index.html +++ b/site/public/about/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/about/legal/index.html b/site/public/about/legal/index.html index 331712ba..b27e9188 100644 --- a/site/public/about/legal/index.html +++ b/site/public/about/legal/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/about/press/index.html b/site/public/about/press/index.html index 3fc33969..e09bf732 100644 --- a/site/public/about/press/index.html +++ b/site/public/about/press/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/50_people_one_question/index.html b/site/public/datasets/50_people_one_question/index.html index 8afe69e3..e3006385 100644 --- a/site/public/datasets/50_people_one_question/index.html +++ b/site/public/datasets/50_people_one_question/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/afad/index.html b/site/public/datasets/afad/index.html index a0aea1a6..8254d4fa 100644 --- a/site/public/datasets/afad/index.html +++ b/site/public/datasets/afad/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/aflw/index.html b/site/public/datasets/aflw/index.html index 7aaa9af0..6c7b2397 100644 --- a/site/public/datasets/aflw/index.html +++ b/site/public/datasets/aflw/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/brainwash/index.html b/site/public/datasets/brainwash/index.html index c0830a96..2a839a24 100644 --- a/site/public/datasets/brainwash/index.html +++ b/site/public/datasets/brainwash/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/caltech_10k/index.html b/site/public/datasets/caltech_10k/index.html index 6615bb1a..9692fb2b 100644 --- a/site/public/datasets/caltech_10k/index.html +++ b/site/public/datasets/caltech_10k/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/celeba/index.html b/site/public/datasets/celeba/index.html index b8300dbf..5e8c5fce 100644 --- a/site/public/datasets/celeba/index.html +++ b/site/public/datasets/celeba/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/cofw/index.html b/site/public/datasets/cofw/index.html index 84d38f1f..2da951ee 100644 --- a/site/public/datasets/cofw/index.html +++ b/site/public/datasets/cofw/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/duke_mtmc/index.html b/site/public/datasets/duke_mtmc/index.html index dcd01308..f5c94620 100644 --- a/site/public/datasets/duke_mtmc/index.html +++ b/site/public/datasets/duke_mtmc/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/facebook/index.html b/site/public/datasets/facebook/index.html index 7fb1901a..bdfb658f 100644 --- a/site/public/datasets/facebook/index.html +++ b/site/public/datasets/facebook/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/feret/index.html b/site/public/datasets/feret/index.html index ce60f3de..4cd57413 100644 --- a/site/public/datasets/feret/index.html +++ b/site/public/datasets/feret/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/hrt_transgender/index.html b/site/public/datasets/hrt_transgender/index.html index 05a49b9b..8d472c3b 100644 --- a/site/public/datasets/hrt_transgender/index.html +++ b/site/public/datasets/hrt_transgender/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/index.html b/site/public/datasets/index.html index 3a2dbd52..c43b2097 100644 --- a/site/public/datasets/index.html +++ b/site/public/datasets/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/lfpw/index.html b/site/public/datasets/lfpw/index.html index 087d8b1d..fae3cc93 100644 --- a/site/public/datasets/lfpw/index.html +++ b/site/public/datasets/lfpw/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/lfw/index.html b/site/public/datasets/lfw/index.html index 22c8c1ad..4b22fdf4 100644 --- a/site/public/datasets/lfw/index.html +++ b/site/public/datasets/lfw/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/market_1501/index.html b/site/public/datasets/market_1501/index.html index 2761a7c7..bacc5b16 100644 --- a/site/public/datasets/market_1501/index.html +++ b/site/public/datasets/market_1501/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/msceleb/index.html b/site/public/datasets/msceleb/index.html index 21a14129..7a3d2bab 100644 --- a/site/public/datasets/msceleb/index.html +++ b/site/public/datasets/msceleb/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/pipa/index.html b/site/public/datasets/pipa/index.html index d74ae49e..89d42a0b 100644 --- a/site/public/datasets/pipa/index.html +++ b/site/public/datasets/pipa/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/uccs/index.html b/site/public/datasets/uccs/index.html index 4de64ebc..56c3a7c5 100644 --- a/site/public/datasets/uccs/index.html +++ b/site/public/datasets/uccs/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/vgg_face2/index.html b/site/public/datasets/vgg_face2/index.html index 42e3b961..dc8f1ebc 100644 --- a/site/public/datasets/vgg_face2/index.html +++ b/site/public/datasets/vgg_face2/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/viper/index.html b/site/public/datasets/viper/index.html index 2610d1a1..29638ed7 100644 --- a/site/public/datasets/viper/index.html +++ b/site/public/datasets/viper/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/datasets/youtube_celebrities/index.html b/site/public/datasets/youtube_celebrities/index.html index dd230926..d7030588 100644 --- a/site/public/datasets/youtube_celebrities/index.html +++ b/site/public/datasets/youtube_celebrities/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/info/index.html b/site/public/info/index.html index ef7dc8db..d535b672 100644 --- a/site/public/info/index.html +++ b/site/public/info/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/research/00_introduction/index.html b/site/public/research/00_introduction/index.html index 5c536dc4..89ca3bb5 100644 --- a/site/public/research/00_introduction/index.html +++ b/site/public/research/00_introduction/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/research/01_from_1_to_100_pixels/index.html b/site/public/research/01_from_1_to_100_pixels/index.html index 37fc367f..f60df65e 100644 --- a/site/public/research/01_from_1_to_100_pixels/index.html +++ b/site/public/research/01_from_1_to_100_pixels/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/research/02_what_computers_can_see/index.html b/site/public/research/02_what_computers_can_see/index.html index 0fce1373..2a9b9c23 100644 --- a/site/public/research/02_what_computers_can_see/index.html +++ b/site/public/research/02_what_computers_can_see/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/research/index.html b/site/public/research/index.html index 303732f8..dc49e849 100644 --- a/site/public/research/index.html +++ b/site/public/research/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/chart/index.html b/site/public/test/chart/index.html index 93e12b3c..4968224f 100644 --- a/site/public/test/chart/index.html +++ b/site/public/test/chart/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/citations/index.html b/site/public/test/citations/index.html index 70b3fe55..3bc07693 100644 --- a/site/public/test/citations/index.html +++ b/site/public/test/citations/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/csv/index.html b/site/public/test/csv/index.html index 70a7d257..8683b4a1 100644 --- a/site/public/test/csv/index.html +++ b/site/public/test/csv/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/datasets/index.html b/site/public/test/datasets/index.html index 15edf039..f0dda184 100644 --- a/site/public/test/datasets/index.html +++ b/site/public/test/datasets/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/face_search/index.html b/site/public/test/face_search/index.html index 93dc2bc6..ad1f59c0 100644 --- a/site/public/test/face_search/index.html +++ b/site/public/test/face_search/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/gallery/index.html b/site/public/test/gallery/index.html index 9e2c54f6..354baa24 100644 --- a/site/public/test/gallery/index.html +++ b/site/public/test/gallery/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/index.html b/site/public/test/index.html index 0fc839d0..ab06c922 100644 --- a/site/public/test/index.html +++ b/site/public/test/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/map/index.html b/site/public/test/map/index.html index 4f4e7093..bde62f4f 100644 --- a/site/public/test/map/index.html +++ b/site/public/test/map/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/name_search/index.html b/site/public/test/name_search/index.html index 4e3ef428..1cc71731 100644 --- a/site/public/test/name_search/index.html +++ b/site/public/test/name_search/index.html @@ -8,7 +8,6 @@ - diff --git a/site/public/test/pie_chart/index.html b/site/public/test/pie_chart/index.html index 7dd159a3..169a6d6a 100644 --- a/site/public/test/pie_chart/index.html +++ b/site/public/test/pie_chart/index.html @@ -8,7 +8,6 @@ - diff --git a/site/templates/layout.html b/site/templates/layout.html index b5b7880c..d51e4b6a 100644 --- a/site/templates/layout.html +++ b/site/templates/layout.html @@ -8,7 +8,6 @@ - -- cgit v1.2.3-70-g09d2 From 5d865f3fe53bfc96625f7624c542f96306567f21 Mon Sep 17 00:00:00 2001 From: Jules Laplace Date: Tue, 2 Apr 2019 15:54:26 +0200 Subject: rebuild --- site/public/about/faq/index.html | 1 + site/public/about/index.html | 1 + site/public/about/legal/index.html | 1 + site/public/about/press/index.html | 1 + site/public/datasets/50_people_one_question/index.html | 1 + site/public/datasets/afad/index.html | 1 + site/public/datasets/aflw/index.html | 1 + site/public/datasets/caltech_10k/index.html | 1 + site/public/datasets/celeba/index.html | 1 + site/public/datasets/cofw/index.html | 1 + site/public/datasets/duke_mtmc/index.html | 1 + site/public/datasets/facebook/index.html | 1 + site/public/datasets/feret/index.html | 1 + site/public/datasets/hrt_transgender/index.html | 1 + site/public/datasets/index.html | 1 + site/public/datasets/lfpw/index.html | 1 + site/public/datasets/lfw/index.html | 1 + site/public/datasets/market_1501/index.html | 1 + site/public/datasets/msceleb/index.html | 1 + site/public/datasets/pipa/index.html | 1 + site/public/datasets/uccs/index.html | 1 + site/public/datasets/vgg_face2/index.html | 1 + site/public/datasets/viper/index.html | 1 + site/public/datasets/youtube_celebrities/index.html | 1 + site/public/info/index.html | 1 + site/public/research/00_introduction/index.html | 1 + site/public/research/01_from_1_to_100_pixels/index.html | 1 + site/public/research/02_what_computers_can_see/index.html | 1 + site/public/research/index.html | 1 + site/public/test/chart/index.html | 1 + site/public/test/citations/index.html | 1 + site/public/test/csv/index.html | 1 + site/public/test/datasets/index.html | 1 + site/public/test/face_search/index.html | 1 + site/public/test/gallery/index.html | 1 + site/public/test/index.html | 1 + site/public/test/map/index.html | 1 + site/public/test/name_search/index.html | 1 + site/public/test/pie_chart/index.html | 1 + site/templates/layout.html | 2 +- 40 files changed, 40 insertions(+), 1 deletion(-) (limited to 'site/public/research') diff --git a/site/public/about/faq/index.html b/site/public/about/faq/index.html index 00e5d719..168abd0b 100644 --- a/site/public/about/faq/index.html +++ b/site/public/about/faq/index.html @@ -17,6 +17,7 @@
      MegaPixels
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