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| author | Adam Harvey <adam@ahprojects.com> | 2019-05-23 18:37:06 +0200 |
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| committer | Adam Harvey <adam@ahprojects.com> | 2019-05-23 18:37:06 +0200 |
| commit | b2b2c7d7816baa7d6de36c1de3576a31aa92a209 (patch) | |
| tree | 9105ef39a3bfcd78e9cf4b8c183ee21e7149bf66 /site/content/pages/datasets/ijb_c/index.md | |
| parent | 4559cf6cccfb6f6d8b8e59e95984044fdf5a5610 (diff) | |
| parent | 84b286e1bd85feba12174a2a480d2be404e7b9c5 (diff) | |
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| -rw-r--r-- | site/content/pages/datasets/ijb_c/index.md | 9 |
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diff --git a/site/content/pages/datasets/ijb_c/index.md b/site/content/pages/datasets/ijb_c/index.md index 0671252b..d1ac769b 100644 --- a/site/content/pages/datasets/ijb_c/index.md +++ b/site/content/pages/datasets/ijb_c/index.md @@ -88,6 +88,15 @@ The first 777 are non-alphabetical. From 777-3531 is alphabetical  +## Research notes + +From original papers: https://noblis.org/wp-content/uploads/2018/03/icb2018.pdf + +Collection for the dataset began by identifying CreativeCommons subject videos, which are often more scarce thanCreative Commons subject images. Search terms that re-sulted in large quantities of person-centric videos (e.g. “in-terview”) were generated and translated into numerous lan-guages including Arabic, Korean, Swahili, and Hindi to in-crease diversity of the subject pool. Certain YouTube userswho upload well-labeled, person-centric videos, such as the World Economic Forum and the International University Sports Federation were also identified. Titles of videos per-taining to these search terms and usernames were scrapedusing the YouTube Data API and translated into English us-ing the Yandex Translate API4. Pattern matching was per-formed to extract potential names of subjects from the trans-lated titles, and these names were searched using the Wiki-data API to verify the subject’s existence and status as a public figure, and to check for Wikimedia Commons im-agery. Age, gender, and geographic region were collectedusing the Wikipedia API.Using the candidate subject names, Creative Commonsimages were scraped from Google and Wikimedia Com-mons, and Creative Commons videos were scraped fromYouTube. After images and videos of the candidate subjectwere identified, AMT Workers were tasked with validat-ing the subject’s presence throughout the video. The AMTWorkers marked segments of the video in which the subjectwas present, and key frames + + +IARPA funds Italian researcher https://www.micc.unifi.it/projects/glaivejanus/ + {% include 'dashboard.html' %} {% include 'supplementary_header.html' %} |
