From 2813b772c8a088307f7a1ab9df167875d320162d Mon Sep 17 00:00:00 2001
From: adamhrv
Date: Wed, 17 Apr 2019 22:46:34 +0200
Subject: update duke
---
site/content/pages/datasets/msceleb/index.md | 28 ++++++++++++++++++++--------
1 file changed, 20 insertions(+), 8 deletions(-)
(limited to 'site/content/pages/datasets/msceleb/index.md')
diff --git a/site/content/pages/datasets/msceleb/index.md b/site/content/pages/datasets/msceleb/index.md
index d5e52952..4c9f1576 100644
--- a/site/content/pages/datasets/msceleb/index.md
+++ b/site/content/pages/datasets/msceleb/index.md
@@ -8,8 +8,8 @@ slug: msceleb
cssclass: dataset
image: assets/background.jpg
year: 2015
-published: 2019-2-23
-updated: 2019-2-23
+published: 2019-4-18
+updated: 2019-4-18
authors: Adam Harvey
------------
@@ -19,10 +19,21 @@ authors: Adam Harvey
### sidebar
### end sidebar
+The Microsoft Celeb dataset is a face recognition training site made entirely of images scraped from the Internet. According to Microsoft Research who created and published the dataset in 2016, MS Celeb is the largest publicly available face recognition dataset in the world, containing over 10 million images of 100,000 individuals.
+
+But Microsoft's ambition was bigger. They wanted to recognize 1 million individuals. As part of their dataset they released a list of 1 million target identities for researchers to identity. The identities
+
+https://www.microsoft.com/en-us/research/publication/ms-celeb-1m-dataset-benchmark-large-scale-face-recognition-2/
+
+In 2019, Microsoft CEO Brad Smith called for the governmental regulation of face recognition, an admission of his own company's inability to control their surveillance-driven business model. Yet since then, and for the last 4 years, Microsoft has willingly and actively played a significant role in accelerating growth in the very same industry they called for the government to regulate. This investigation looks look into the [MS Celeb](https://www.microsoft.com/en-us/research/publication/ms-celeb-1m-dataset-benchmark-large-scale-face-recognition-2/) dataset and Microsoft Research's role in creating and distributing the largest publicly available face recognition dataset in the world to both.
+
+
+
+to spur growth and incentivize researchers, Microsoft released a dataset called [MS Celeb](https://msceleb.org), or Microsft Celeb, in which they developed and published a list of exactly 1 million targeted people whose biometrics would go on to build
+
+
-https://www.hrw.org/news/2019/01/15/letter-microsoft-face-surveillance-technology
-https://www.scmp.com/tech/science-research/article/3005733/what-you-need-know-about-sensenets-facial-recognition-firm
{% include 'dashboard.html' %}
@@ -30,11 +41,12 @@ https://www.scmp.com/tech/science-research/article/3005733/what-you-need-know-ab
### Additional Information
-- The dataset author spoke about his research at the CVPR conference in 2016
+- SenseTime https://www.semanticscholar.org/paper/The-Devil-of-Face-Recognition-is-in-the-Noise-Wang-Chen/9e31e77f9543ab42474ba4e9330676e18c242e72
+- Microsoft used it https://www.semanticscholar.org/paper/One-shot-Face-Recognition-by-Promoting-Classes-Guo/6cacda04a541d251e8221d70ac61fda88fb61a70
+- https://www.hrw.org/news/2019/01/15/letter-microsoft-face-surveillance-technology
+- https://www.scmp.com/tech/science-research/article/3005733/what-you-need-know-about-sensenets-facial-recognition-firm
### Footnotes
-[^readme]: "readme.txt" https://exhibits.stanford.edu/data/catalog/sx925dc9385.
-[^localized_region_context]: 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.
-[^replacement_algorithm]: Zhao. X, Wang Y, Dou, Y. A Replacement Algorithm of Non-Maximum Suppression Base on Graph Clustering.
\ No newline at end of file
+[^brad_smith]: Brad Smith cite
\ No newline at end of file
--
cgit v1.2.3-70-g09d2
From 95302fe0c52a8aaecc40410cc9c76d258e708faa Mon Sep 17 00:00:00 2001
From: adamhrv
Date: Thu, 18 Apr 2019 21:46:46 +0200
Subject: msceleb rough draft
---
site/content/pages/datasets/msceleb/index.md | 77 +++++--
site/public/datasets/brainwash/ijb_c/index.html | 152 ++++++++++++++
site/public/datasets/brainwash/index.html | 8 +-
site/public/datasets/duke_mtmc/index.html | 79 ++------
site/public/datasets/ijb_c/index.html | 151 ++++++++++++++
site/public/datasets/index.html | 12 ++
site/public/datasets/lfw/index.html | 6 +-
site/public/datasets/msceleb/index.html | 225 +++++++++++++++++++--
site/public/datasets/oxford_town_centre/index.html | 4 +-
site/public/datasets/uccs/index.html | 10 +-
site/public/research/00_introduction/index.html | 5 +
11 files changed, 625 insertions(+), 104 deletions(-)
create mode 100644 site/public/datasets/brainwash/ijb_c/index.html
create mode 100644 site/public/datasets/ijb_c/index.html
(limited to 'site/content/pages/datasets/msceleb/index.md')
diff --git a/site/content/pages/datasets/msceleb/index.md b/site/content/pages/datasets/msceleb/index.md
index 4c9f1576..0c78e094 100644
--- a/site/content/pages/datasets/msceleb/index.md
+++ b/site/content/pages/datasets/msceleb/index.md
@@ -2,8 +2,8 @@
status: published
title: Microsoft Celeb
-desc: MS Celeb is a dataset of web images used for training and evaluating face recognition algorithms
-subdesc: The MS Celeb dataset includes over 10,000,000 images and 93,000 identities of semi-public figures collected using the Bing search engine
+desc: Microsoft Celeb 1M is a target list and dataset of web images used for research and development of face recognition technologies
+subdesc: The MS Celeb dataset includes over 10 million images of about 100K people and a target list of 1 million individuals
slug: msceleb
cssclass: dataset
image: assets/background.jpg
@@ -19,34 +19,81 @@ authors: Adam Harvey
### sidebar
### end sidebar
-The Microsoft Celeb dataset is a face recognition training site made entirely of images scraped from the Internet. According to Microsoft Research who created and published the dataset in 2016, MS Celeb is the largest publicly available face recognition dataset in the world, containing over 10 million images of 100,000 individuals.
+Microsoft Celeb (MS Celeb) is a dataset of 10 million face images scraped from the Internet and used for research and development of large-scale biometric recognition systems. According to Microsoft Research who created and published the [dataset](http://msceleb.org) in 2016, MS Celeb is the largest publicly available face recognition dataset in the world, containing over 10 million images of nearly 100,000 individuals. Microsoft's goal in building this dataset was to distribute the initial training dataset of 100,000 individuals images and use this to accelerate reserch into recognizing a target list of one million individuals from their face images "using all the possibly collected face images of this individual on the web as training data".[^msceleb_orig]
-But Microsoft's ambition was bigger. They wanted to recognize 1 million individuals. As part of their dataset they released a list of 1 million target identities for researchers to identity. The identities
+These one million people, defined as Micrsoft Research as "celebrities", are often merely people who must maintain an online presence for their professional lives. Microsoft's list of 1 million people is an expansive exploitation of the current reality that for many people including academics, policy makers, writers, artists, and especially journalists maintaining an online presence is mandatory and should not allow Microsoft (or anyone else) to use their biometrics for reserach and development of surveillance technology. Many of names in target list even include people critical of the very technology Microsoft is using their name and biometric information to build. The list includes digital rights activists like Jillian York and [add more]; artists critical of surveillance including Trevor Paglen, Hito Steryl, Kyle McDonald, Jill Magid, and Aram Bartholl; Intercept founders Laura Poitras, Jeremy Scahill, and Glen Greenwald; Data and Society founder danah boyd; and even Julie Brill the former FTC commissioner responsible for protecting consumer’s privacy to name a few.
-https://www.microsoft.com/en-us/research/publication/ms-celeb-1m-dataset-benchmark-large-scale-face-recognition-2/
+### Microsoft's 1 Million Target List
-In 2019, Microsoft CEO Brad Smith called for the governmental regulation of face recognition, an admission of his own company's inability to control their surveillance-driven business model. Yet since then, and for the last 4 years, Microsoft has willingly and actively played a significant role in accelerating growth in the very same industry they called for the government to regulate. This investigation looks look into the [MS Celeb](https://www.microsoft.com/en-us/research/publication/ms-celeb-1m-dataset-benchmark-large-scale-face-recognition-2/) dataset and Microsoft Research's role in creating and distributing the largest publicly available face recognition dataset in the world to both.
+Below is a list of names that were included in list of 1 million individuals curated to illustrate Microsoft's expansive and exploitative practice of scraping the Internet for biometric training data. The entire name file can be downloaded from [msceleb.org](https://msceleb.org). Names appearing with * indicate that Microsoft also distributed imaged.
+[ cleaning this up ]
+=== columns 2
-to spur growth and incentivize researchers, Microsoft released a dataset called [MS Celeb](https://msceleb.org), or Microsft Celeb, in which they developed and published a list of exactly 1 million targeted people whose biometrics would go on to build
+| Name | ID | Profession | Images |
+| --- | --- | --- | --- |
+| Jeremy Scahill | /m/02p_8_n | Journalist | x |
+| Jillian York | /m/0g9_3c3 | Digital rights activist | x |
+| Astra Taylor | /m/05f6_39 | Author, activist | x |
+| Jonathan Zittrain | /m/01f75c | EFF board member | no |
+| Julie Brill | x | x | x |
+| Jonathan Zittrain | x | x | x |
+| Bruce Schneier | m.095js | Cryptologist and author | yes |
+| Julie Brill | m.0bs3s9g | x | x |
+| Kim Zetter | /m/09r4j3 | x | x |
+| Ethan Zuckerman | x | x | x |
+| Jill Magid | x | x | x |
+| Kyle McDonald | x | x | x |
+| Trevor Paglen | x | x | x |
+| R. Luke DuBois | x | x | x |
+====
+| Name | ID | Profession | Images |
+| --- | --- | --- | -- |
+| Trevor Paglen | x | x | x |
+| Ai Weiwei | /m/0278dyq | x | x |
+| Jer Thorp | /m/01h8lg | x | x |
+| Edward Felten | /m/028_7k | x | x |
+| Evgeny Morozov | /m/05sxhgd | Scholar and technology critic | yes |
+| danah boyd | /m/06zmx5 | Data and Society founder | x |
+| Bruce Schneier | x | x | x |
+| Laura Poitras | x | x | x |
+| Trevor Paglen | x | x | x |
+| Astra Taylor | x | x | x |
+| Shoshanaa Zuboff | x | x | x |
+| Eyal Weizman | m.0g54526 | x | x |
+| Aram Bartholl | m.06_wjyc | x | x |
+| James Risen | m.09pk6b | x | x |
+=== end columns
+After publishing this list, researchers from Microsoft Asia then worked with researchers affilliated with China's National University of Defense Technology (controlled by China's Central Military Commission) and used the the MS Celeb dataset for their [research paper](https://www.semanticscholar.org/paper/Faces-as-Lighting-Probes-via-Unsupervised-Deep-Yi-Zhu/b301fd2fc33f24d6f75224e7c0991f4f04b64a65) on using "Faces as Lighting Probes via Unsupervised Deep Highlight Extraction" with potential applications in 3D face recognition.
-{% include 'dashboard.html' %}
+In an article published by the Financial Times based on data discovered during this investigation, Samm Sacks (senior fellow at New American and China tech policy expert) commented that this research raised "red flags because of the nature of the technology, the authors affilliations, combined with the what we know about how this technology is being deployed in China right now".[^madhu_ft]
-{% include 'supplementary_header.html' %}
+Four more papers published by SenseTime which also use the MS Celeb dataset raise similar flags. SenseTime is Beijing based company providing surveillance to Chinese authorities including [ add context here ] has been [flagged](https://www.nytimes.com/2019/04/14/technology/china-surveillance-artificial-intelligence-racial-profiling.html) as complicity in potential human rights violations.
+
+One of the 4 SenseTime papers, "Exploring Disentangled Feature Representation Beyond Face Identification", shows how SenseTime is developing automated face analysis technology to infer race, narrow eyes, nose size, and chin size, all of which could be used to target vulnerable ethnic groups based on their facial appearances.[^disentangled]
+
+Earlier in 2019, Microsoft CEO [Brad Smith](https://blogs.microsoft.com/on-the-issues/2018/12/06/facial-recognition-its-time-for-action/) called for the governmental regulation of face recognition, citing the potential for misuse, a rare admission that Microsoft's surveillance-driven business model had lost its bearing. More recently Smith also [announced](https://www.reuters.com/article/us-microsoft-ai/microsoft-turned-down-facial-recognition-sales-on-human-rights-concerns-idUSKCN1RS2FV) that Microsoft would seemingly take stand against potential misuse and decided to not sell face recognition to an unnamed United States law enforcement agency, citing that their technology was not accurate enough to be used on minorities because it was trained mostly on white male faces.
+
+What the decision to block the sale announces is not so much that Microsoft has upgraded their ethics, but that it publicly acknolwedged it can't sell a data-driven product without data. Microsoft can't sell face recognition for faces they can't train on.
-### Additional Information
+Until now, that data has been freely harvested from the Internet and packaged in training sets like MS Celeb, which are overwhelmingly [white](https://www.nytimes.com/2018/02/09/technology/facial-recognition-race-artificial-intelligence.html) and [male](https://gendershades.org). Without balanced data, facial recognition contains blind spots. And without datasets like MS Celeb, the powerful yet innaccurate facial recognition services like Microsoft's Azure Cognitive Service also would not be able to see at all.
-- SenseTime https://www.semanticscholar.org/paper/The-Devil-of-Face-Recognition-is-in-the-Noise-Wang-Chen/9e31e77f9543ab42474ba4e9330676e18c242e72
-- Microsoft used it https://www.semanticscholar.org/paper/One-shot-Face-Recognition-by-Promoting-Classes-Guo/6cacda04a541d251e8221d70ac61fda88fb61a70
-- https://www.hrw.org/news/2019/01/15/letter-microsoft-face-surveillance-technology
-- https://www.scmp.com/tech/science-research/article/3005733/what-you-need-know-about-sensenets-facial-recognition-firm
+Microsoft didn't only create MS Celeb for other researchers to use, they also used it internally. In a publicly available 2017 Microsoft Research project called "([One-shot Face Recognition by Promoting Underrepresented Classes](https://www.microsoft.com/en-us/research/publication/one-shot-face-recognition-promoting-underrepresented-classes/))", Microsoft leveraged the MS Celeb dataset to analyse their algorithms and advertise the results. Interestingly, the Microsoft's [corporate version](https://www.microsoft.com/en-us/research/publication/one-shot-face-recognition-promoting-underrepresented-classes/) does not mention they used the MS Celeb datset, but the [open-acess version](https://www.semanticscholar.org/paper/One-shot-Face-Recognition-by-Promoting-Classes-Guo/6cacda04a541d251e8221d70ac61fda88fb61a70) of the paper published on arxiv.org that same year explicity mentions that Microsoft Research tested their algorithms "on the MS-Celeb-1M low-shot learning benchmark task."
+We suggest that if Microsoft Research wants biometric data for surveillance research and development, they should start with own researcher's biometric data instead of scraping the Internet for journalists, artists, writers, and academics.
+
+{% include 'dashboard.html' %}
+
+{% include 'supplementary_header.html' %}
### Footnotes
-[^brad_smith]: Brad Smith cite
\ No newline at end of file
+[^brad_smith]: Brad Smith cite
+[^msceleb_orig]: MS-Celeb-1M: A Dataset and Benchmark for Large-Scale Face Recognition
+[^madhu_ft]: Microsoft worked with Chinese military university on artificial intelligence
+[^disentangled]: "Exploring Disentangled Feature Representation Beyond Face Identification"
\ No newline at end of file
diff --git a/site/public/datasets/brainwash/ijb_c/index.html b/site/public/datasets/brainwash/ijb_c/index.html
new file mode 100644
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+++ b/site/public/datasets/brainwash/ijb_c/index.html
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+ MegaPixels
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Brainwash is a dataset of livecam images taken from San Francisco's Brainwash Cafe. It includes 11,918 images of "everyday life of a busy downtown cafe"1 captured at 100 second intervals throught the entire day. The Brainwash dataset includes 3 full days of webcam images taken on October 27, November 13, and November 24 in 2014. According the author's reserach paper introducing the dataset, the images were acquired with the help of Angelcam.com2
+
The Brainwash dataset is unique because it uses images from a publicly available webcam that records people inside a privately owned business without any consent. No ordinary cafe custom could ever suspect there image would end up in dataset used for surveillance reserach and development, but that is exactly what happened to customers at Brainwash cafe in San Francisco.
+
Although Brainwash appears to be a less popular dataset, it was used in 2016 and 2017 by researchers from the National University of Defense Technology in China took note of the dataset and used it for two researchprojects on advancing the capabilities of object detection to more accurately isolate the target region in an image (PDF). 34. The dataset also appears in a 2017 research paper from Peking University for the purpose of improving surveillance capabilities for "people detection in the crowded scenes".
+
A visualization of 81,973 head annotations from the Brainwash dataset training partition. Credit: megapixels.cc. License: Open Data Commons Public Domain Dedication (PDDL)
+
Who used IJB-C?
+
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+ 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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Biometric Trade Routes
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+ To help understand how IJB-C has been used around the world by commercial, military, and academic organizations; existing publicly available research citing IARPA Janus Benchmark C was collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal research projects at that location.
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Citation data is collected using SemanticScholar.org then dataset usage verified and geolocated.
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Dataset Citations
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+ 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. If you use our data, please cite our work.
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Supplementary Information
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An sample image from the Brainwash dataset used for training face and head detection algorithms for surveillance. The datset contains 11,916 more images like this one. Credit: megapixels.cc. License: Open Data Commons Public Domain Dedication (PDDL)
A visualization of the active regions for 81,973 head annotations from the Brainwash dataset training partition. Credit: megapixels.cc. License: Open Data Commons Public Domain Dedication (PDDL)
+
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Cite Our Work
+
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+ If you use our data, research, or graphics please cite our work:
+
+
+@online{megapixels,
+ author = {Harvey, Adam. LaPlace, Jules.},
+ title = {MegaPixels: Origins, Ethics, and Privacy Implications of Publicly Available Face Recognition Image Datasets},
+ year = 2019,
+ url = {https://megapixels.cc/},
+ urldate = {2019-04-18}
+}
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.
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.
2 aStewart, Russel. Andriluka, Mykhaylo. "End-to-end people detection in crowded scenes". 2016.
+
3 aLi, 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.
+
4 aZhao. X, Wang Y, Dou, Y. A Replacement Algorithm of Non-Maximum Suppression Base on Graph Clustering.
Duke MTMC (Multi-Target, Multi-Camera) is a dataset of surveillance video footage taken on Duke University's campus in 2014 and is used for research and development of video tracking systems, person re-identification, and low-resolution facial recognition. The dataset contains over 14 hours of synchronized surveillance video from 8 cameras at 1080p and 60FPS with over 2 million frames of 2,000 students walking to and from classes. The 8 surveillance cameras deployed on campus were specifically setup to capture students "during periods between lectures, when pedestrian traffic is heavy"1.
In this investigation into the Duke MTMC dataset we tracked down over 100 publicly available research papers that explicitly acknowledged using Duke MTMC. Our analysis shows that the dataset has spread far beyond its origins and intentions in academic research projects at Duke University. Since its publication in 2016, more than twice as many research citations originated in China as in the United States. Among these citations were papers with explicit and direct links to the Chinese military and several of the companies known to provide Chinese authorities with the oppressive surveillance technology used to monitor millions of Uighur Muslims.
-<<<<<<< HEAD
-
In one 2018 paper jointly published by researchers from SenseNets and SenseTime (and funded by SenseTime Group Limited) entitled Attention-Aware Compositional Network for Person Re-identification, the Duke MTMC dataset was used for "extensive experiments" on improving person re-identification across multiple surveillance cameras with important applications in "finding missing elderly and children, and suspect tracking, etc." Both SenseNets and SenseTime have been directly linked to the providing surveillance technology to monitor Uighur Muslims in China. 234
-=======
-
In one 2018 paper jointly published by researchers from SenseNets and SenseTime (and funded by SenseTime Group Limited) entitled Attention-Aware Compositional Network for Person Re-identification, the Duke MTMC dataset was used for "extensive experiments" on improving person re-identification across multiple surveillance cameras with important applications in "finding missing elderly and children, and suspect tracking, etc." Both SenseNets and SenseTime have been directly linked to the providing surveillance technology to monitor Uighur Muslims in China. 123
In one 2018 paper jointly published by researchers from SenseNets and SenseTime (and funded by SenseTime Group Limited) entitled Attention-Aware Compositional Network for Person Re-identification, the Duke MTMC dataset was used for "extensive experiments" on improving person re-identification across multiple surveillance cameras with important applications in "finding missing elderly and children, and suspect tracking, etc." Both SenseNets and SenseTime have been directly linked to the providing surveillance technology to monitor Uighur Muslims in China. 423
A collection of 1,600 out of the approximately 2,000 students and pedestrians in the Duke MTMC dataset. These students were also included in the Duke MTMC Re-ID dataset extension used for person re-identification, and eventually the QMUL SurvFace face recognition dataset. Open Data Commons Attribution License.
Despite repeatedwarnings by Human Rights Watch that the authoritarian surveillance used in China represents a violation of human rights, researchers at Duke University continued to provide open access to their dataset for anyone to use for any project. As the surveillance crisis in China grew, so did the number of citations with links to organizations complicit in the crisis. In 2018 alone there were over 70 research projects happening in China that publicly acknowledged benefiting from the Duke MTMC dataset. Amongst these were projects from SenseNets, SenseTime, CloudWalk, Megvii, Beihang University, and the PLA's National University of Defense Technology.
@@ -200,15 +196,9 @@
By some metrics the dataset is considered a huge success. It is regarded as highly influential research and has contributed to hundreds, if not thousands, of projects to advance artificial intelligence for person tracking and monitoring. All the above citations, regardless of which country is using it, align perfectly with the original intent of the Duke MTMC dataset: "to accelerate advances in multi-target multi-camera tracking".
-<<<<<<< HEAD
The same logic applies for all the new extensions of the Duke MTMC dataset including Duke MTMC Re-ID, Duke MTMC Video Re-ID, Duke MTMC Groups, and Duke MTMC Attribute. And it also applies to all the new specialized datasets that will be created from Duke MTMC, such as the low-resolution face recognition dataset called QMUL-SurvFace, which was funded in part by SeeQuestor, a computer vision provider to law enforcement agencies including Scotland Yards and Queensland Police. From the perspective of academic researchers, security contractors, and defense agencies using these datasets to advance their organization's work, Duke MTMC provides significant value regardless of who else is using it, so long as it advances their own interests in artificial intelligence.
But this perspective comes at significant cost to civil rights, human rights, and privacy. The creation and distribution of the Duke MTMC illustrates an egregious prioritization of surveillance technologies over individual rights, where the simple act of going to class could implicate your biometric data in a surveillance training dataset, perhaps even used by foreign defense agencies against your own ethics, against your own political interests, or against universal human rights.
-
For the approximately 2,000 students in Duke MTMC dataset, there is unfortunately no escape. It would be impossible to remove oneself from all copies of the dataset downloaded around the world. Instead, over 2,000 students and visitors who happened to be walking to class on March 13, 2014 will forever remain in all downloaded copies of the Duke MTMC dataset and all its extensions, contributing to a global supply chain of data that powers governmental and commercial expansion of biometric surveillance technologies.
-=======
-
The same logic applies for all the new extensions of the Duke MTMC dataset including Duke MTMC Re-ID, Duke MTMC Video Re-ID, Duke MTMC Groups, and Duke MTMC Attribute. And it also applies to all the new specialized datasets that will be created from Duke MTMC, such as the low-resolution face recognition dataset called QMUL-SurvFace, which was funded in part by SeeQuestor, a computer vision provider to law enforcement agencies including Scotland Yards and Queensland Police. From the perspective of academic researchers, security contractors, and defense agencies using these datasets to advance their organization's work, Duke MTMC provides significant value regardless of who else is using it so long as it accelerate advances their own interests in artificial intelligence.
But this perspective comes at significant cost to civil rights, human rights, and privacy. The creation and distribution of the Duke MTMC illustrates an egregious prioritization of surveillance technologies over individual rights, where the simple act of going to class could implicate your biometric data in a surveillance training dataset, perhaps even used by foreign defense agencies against your own ethics, against universal human rights, or against your own political interests.
For the approximately 2,000 students in Duke MTMC dataset there is unfortunately no escape. It would be impossible to remove oneself from all copies of the dataset downloaded around the world. Instead, over 2,000 students and visitors who happened to be walking to class in 2014 will forever remain in all downloaded copies of the Duke MTMC dataset and all its extensions, contributing to a global supply chain of data that powers governmental and commercial expansion of biometric surveillance technologies.
Duke MTMC camera locations on Duke University campus. Open Data Commons Attribution License.
Who used Duke MTMC Dataset?
@@ -270,11 +260,7 @@
Supplementary Information
Video Timestamps
-<<<<<<< HEAD
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The video timestamps contain the likely, but not yet confirmed, date and times of capture. Because the video timestamps align with the start and stop time sync data provided by the researchers, it at least aligns the relative time. The rainy weather on that day also contributes towards the likelihood of March 14, 2014.
-=======
The video timestamps contain the likely, but not yet confirmed, date and times the video recorded. Because the video timestamps align with the start and stop time sync data provided by the researchers, it at least confirms the relative timing. The precipitous weather on March 14, 2014 in Durham, North Carolina supports, but does not confirm, that this day is a potential capture date.
->>>>>>> 61fbcb8f2709236f36a103a73e0bd9d1dd3723e8
Camera
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-<<<<<<< HEAD
Errata
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The Duke MTMC dataset paper mentions 2,700 identities, but their ground truth file only lists annotations for 1,812.
-
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Citing Duke MTMC
-
If you use any data from the Duke MTMC, please follow their license and cite their work as:
-
-@inproceedings{ristani2016MTMC,
- title = {Performance Measures and a Data Set for Multi-Target, Multi-Camera Tracking},
- author = {Ristani, Ergys and Solera, Francesco and Zou, Roger and Cucchiara, Rita and Tomasi, Carlo},
- booktitle = {European Conference on Computer Vision workshop on Benchmarking Multi-Target Tracking},
- year = {2016}
-}
-
-=======
-
Notes
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The original Duke MTMC dataset paper mentions 2,700 identities, but their ground truth file only lists annotations for 1,812, and their own research typically mentions 2,000. For this write up we used 2,000 to describe the approximate number of students.
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The original Duke MTMC dataset paper mentions 2,700 identities, but their ground truth file only lists annotations for 1,812, and their own research typically mentions 2,000. For this writeup we used 2,000 to describe the approximate number of students.
Ethics
Please direct any questions about the ethics of the dataset to Duke University's Institutional Ethics & Compliance Office using the number at the bottom of the page.
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Cite Our Work
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ToDo
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clean up citations, formatting
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References
1 a"Performance Measures and a Data Set for Multi-Target, Multi-Camera Tracking". 2016. SemanticScholar
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If you use any data from the Duke MTMC please follow their license and cite their work as:
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Citing Duke MTMC
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If you use any data from the Duke MTMC, please follow their license and cite their work as:
@inproceedings{ristani2016MTMC,
title = {Performance Measures and a Data Set for Multi-Target, Multi-Camera Tracking},
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booktitle = {European Conference on Computer Vision workshop on Benchmarking Multi-Target Tracking},
year = {2016}
}
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Who used IJB-C?
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+ 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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Biometric Trade Routes
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+ To help understand how IJB-C has been used around the world by commercial, military, and academic organizations; existing publicly available research citing IARPA Janus Benchmark C was collected, verified, and geocoded to show the biometric trade routes of people appearing in the images. Click on the markers to reveal research projects at that location.
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Citation data is collected using SemanticScholar.org then dataset usage verified and geolocated.
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Dataset Citations
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+ 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. If you use our data, please cite our work.
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Supplementary Information
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Cite Our Work
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+ If you use our data, research, or graphics please cite our work:
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+@online{megapixels,
+ author = {Harvey, Adam. LaPlace, Jules.},
+ title = {MegaPixels: Origins, Ethics, and Privacy Implications of Publicly Available Face Recognition Image Datasets},
+ year = 2019,
+ url = {https://megapixels.cc/},
+ urldate = {2019-04-18}
+}
2 Stewart, Russel. Andriluka, Mykhaylo. "End-to-end people detection in crowded scenes". 2016.
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3 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.
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4 Zhao. X, Wang Y, Dou, Y. A Replacement Algorithm of Non-Maximum Suppression Base on Graph Clustering.
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