Multi Target Tracking from Drones by Learning from Generalized Graph Differences

2019 IEEE/CVF International Conference on Computer Vision Workshop (ICCVW)(2019)

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摘要
Formulating the multi object tracking problem as a network flow optimization problem is a popular choice. The weights of such network flow problem can be learnt efficiently from training data using a recently introduced concept called Generalized Graph Differences (GGD). This allows a general tracker implementation to be specialized to drone videos by training it on the VisDrone dataset. Two modifications to the original GGD is introduced in this paper and a result with an average precision of 23.09 on the test set of VisDrone 2019 was achieved.
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关键词
Multi target tracking
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