GMCP-Tracker: Global Multi-object Tracking Using Generalized Minimum Clique Graphs



Introduction



Data association is an essential component of any human tracking system. The majority of current methods, such as bipartite matching, incorporate a limited-temporal-locality of the sequence into the data association problem, which makes them inherently prone to ID-switches and difficulties caused by long-term occlusion, cluttered background, and crowded scenes. We propose an approach to data association which incorporates both motion and appearance in a global manner. Unlike limited-temporal-locality methods which incorporate a few frames into the data association problem, we incorporate the whole temporal span and solve the data association problem for one object at a time, while implicitly incorporating the rest of the objects. In order to achieve this, we utilize Generalized Minimum Clique Graphs to solve the optimization problem of our data association method. Our proposed method yields a better formulated approach to data association which is supported by our superior results. Experiments show the proposed method makes significant improvements in tracking in the diverse sequences of Town Center, TUD-crossing, TUD-Stadtmitte, PETS2009, and a new sequence called Parking Lot compared to the state of the art methods.

Presentations

Videos

60-Second Summary


Finding Tracklets Using GMCP

The process of generating tracklets using GMCP is demonstrated in the following video.

Tracking Results

Tracking results on TUD-Crossing, Parking Lot and PETS2009 sequences are shown in the following video.

Full Presentation

20-Minute presentation of the full paper by Amir R. Zamir

PowerPoint

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Poster

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Results

Parking Lot Sequence

Please contact us if you are interested in obtaining the Parking Lot sequence.

CODE

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Tracking Results

Please contact us to obtain the detailed tracking results of all the sequences we reported in the paper.

Related Publications

Amir Roshan Zamir, Afshin Dehghan, and Mubarak Shah, GMCP-Tracker: Global Multi-object Tracking Using Generalized Minimum Clique Graphs, European Conference on Computer Vision (ECCV), 2012. [PDF], [BibTeX]

Afshin Dehghan, Haroon Idrees, Amir Roshan Zamir, and Mubarak Shah, (In alphabetical order) Keynote: Automatic Detection and Tracking of Pedestrians in Videos with Various Crowd Densities
In Proceedings of PED, June 2012, [PDF], [BibTeX]