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<!doctype html>
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  <meta name="author" content="Adam Harvey" />
  <meta name="description" content="Duke MTMC is a dataset of CCTV footage of students at Duke University" />
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  <section class='intro_section' style='background-image: url(https://nyc3.digitaloceanspaces.com/megapixels/v1/datasets/duke_mtmc/assets/background.jpg)'><div class='inner'><div class='hero_desc'><span class='bgpad'><span class="dataset-name">Duke MTMC</span> is a dataset of CCTV footage of students at Duke University</span></div><div class='hero_subdesc'><span class='bgpad'>Duke MTMC contains over 2 million video frames and 2,000 unique identities collected from 8 cameras at Duke University campus in March 2014
</span></div></div></section><section><div class='left-sidebar'><div class='meta'><div><div class='gray'>Collected</div><div>March 19, 2014</div></div><div><div class='gray'>Cameras</div><div>8</div></div><div><div class='gray'>Video Frames</div><div>2,000,000</div></div><div><div class='gray'>Identities</div><div>Over 2,000</div></div><div><div class='gray'>Used for</div><div>Person re-identification, <br>face recognition</div></div><div><div class='gray'>Sector</div><div>Academic</div></div><div><div class='gray'>Website</div><div><a href="http://vision.cs.duke.edu/DukeMTMC/">duke.edu</a></div></div></div></div><h2>Duke Multi-Target, Multi-Camera Tracking Dataset (Duke MTMC)</h2>
<p>(PAGE UNDER DEVELOPMENT)</p>
</section><section>
	
	<h3>Information Supply Chain</h3>
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	<p>
		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 
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	<li class="edu">Academic</li>
	<li class="com">Industry</li>
	<li class="gov">Government / Military</li>
	<li class="source">Citation data is collected using <a href="https://semanticscholar.org" target="_blank">SemanticScholar.org</a> then dataset usage verified and geolocated.</li>
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		[section under development] Duke MTMC Dataset ... Standardized paragraph of text about the map. Sed ut perspiciatis, unde omnis iste natus error sit voluptatem accusantium doloremque laudantium, totam rem aperiam eaque ipsa, quae ab illo inventore veritatis et quasi architecto beatae vitae dicta sunt, explicabo.
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</section><section>
  <h3>Who used Duke MTMC Dataset?</h3>

  <p>
    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.
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  <h2>Supplementary Information</h2>
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  <h3>Citations</h3>
  <p>
    Citations were collected from <a href="https://www.semanticscholar.org">Semantic Scholar</a>, 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.
  </p>
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    Add [button/link] to download CSV. Add search input field to filter.
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</section><section><h2>Research Notes</h2>
<ul>
<li>"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." - 27a2fad58dd8727e280f97036e0d2bc55ef5424c</li>
<li>"This work was supported in part by the EPSRC Programme Grant (FACER2VM) EP/N007743/1, EPSRC/dstl/MURI project EP/R018456/1, the National Natural Science Foundation of China (61373055, 61672265, 61602390, 61532009, 61571313), Chinese Ministry of Education (Z2015101), Science and Technology Department of Sichuan Province (2017RZ0009 and 2017FZ0029), Education Department of Sichuan Province (15ZB0130), the Open Research Fund from Province Key Laboratory of Xihua University (szjj2015-056) and the NVIDIA GPU Grant Program." - ec9c20ed6cce15e9b63ac96bb5a6d55e69661e0b</li>
<li>"DukeMTMC aims to accelerate advances in multi-target multi-camera tracking. It provides a tracking system that works within and across cameras, a new large scale HD video data set recorded by 8 synchronized cameras with more than 7,000 single camera trajectories and over 2,000 unique identities, and a new performance evaluation method that measures how often a system is correct about who is where"</li>
<li><p>DukeMTMC is a new, manually annotated, calibrated, multi-camera data set recorded outdoors on the Duke University campus with 8 synchronized cameras. It consists of:</p>
<p>8 static cameras x 85 minutes of 1080p 60 fps video
 More than 2,000,000 manually annotated frames
 More than 2,000 identities
 Manual annotation by 5 people over 1 year
 More identities than all existing MTMC datasets combined
 Unconstrained paths, diverse appearance</p>
</li>
<li>DukeMTMC Project
Ergys Ristani Ergys Ristani Ergys Ristani Ergys Ristani Ergys Ristani</li>
</ul>
<p>People involved:
Ergys Ristani, Francesco Solera, Roger S. Zou, Rita Cucchiara, Carlo Tomasi.</p>
<p>Navigation:</p>
<p>Data Set
   Downloads
   Downloads
   Dataset Extensions
   Performance Measures
   Tracking Systems
   Publications
   How to Cite
   Contact</p>
<p>Welcome to the Duke Multi-Target, Multi-Camera Tracking Project.</p>
<p>DukeMTMC aims to accelerate advances in multi-target multi-camera tracking. It provides a tracking system that works within and across cameras, a new large scale HD video data set recorded by 8 synchronized cameras with more than 7,000 single camera trajectories and over 2,000 unique identities, and a new performance evaluation method that measures how often a system is correct about who is where.
DukeMTMC Data Set
Snapshot from the DukeMTMC data set.</p>
<p>DukeMTMC is a new, manually annotated, calibrated, multi-camera data set recorded outdoors on the Duke University campus with 8 synchronized cameras. It consists of:</p>
<p>8 static cameras x 85 minutes of 1080p 60 fps video
   More than 2,000,000 manually annotated frames
   More than 2,000 identities
   Manual annotation by 5 people over 1 year
   More identities than all existing MTMC datasets combined
   Unconstrained paths, diverse appearance</p>
<p>News</p>
<p>05 Feb 2019 We are organizing the 2nd Workshop on MTMCT and ReID at CVPR 2019
   25 Jul 2018: The code for DeepCC is available on github
   28 Feb 2018: OpenPose detections now available for download
   19 Feb 2018: Our DeepCC tracker has been accepted to CVPR 2018
   04 Oct 2017: A new blog post describes ID measures of performance
   26 Jul 2017: Slides from the BMTT 2017 workshop are now available
   09 Dec 2016: DukeMTMC is now hosted on MOTChallenge</p>
<p>DukeMTMC Downloads</p>
<p>DukeMTMC dataset (tracking)</p>
<p>Dataset Extensions</p>
<p>Below is a list of dataset extensions provided by the community:</p>
<p>DukeMTMC-VideoReID (download)
   DukeMTMC-reID (download)
   DukeMTMC4REID
   DukeMTMC-attribute</p>
<p>If you use or extend DukeMTMC, please refer to the license terms.
DukeMTMCT Benchmark</p>
<p>DukeMTMCT is a tracking benchmark hosted on motchallenge.net. Click here for the up-to-date rankings. Here you will find the official motchallenge-devkit used for evaluation by MOTChallenge. For detailed instructions how to submit on motchallenge you can refer to this link.</p>
<p>Trackers are ranked using our identity-based measures which compute how often the system is correct about who is where, regardless of how often a target is lost and reacquired. Our measures are useful in applications such as security, surveillance or sports. This short post describes our measures with illustrations, while for details you can refer to the original paper.
Tracking Systems</p>
<p>We provide code for the following tracking systems which are all based on Correlation Clustering optimization:</p>
<p>DeepCC for single- and multi-camera tracking [1]
   Single-Camera Tracker (demo video) [2]
   Multi-Camera Tracker (demo video, failure cases) [2]
   People-Groups Tracker [3]
   Original Single-Camera Tracker [4]</p>
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