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Multi Target Tracking by Learning from Generalized Graph Differences

2019-08-19 08:57:46
Håkan Ardö, Mikael Nilsson

Abstract

Formulating the multi object tracking problem as a network flow optimization problem is a popular choice. In this paper an efficient way of learning the weights of such a network is presented. It separates the problem into one embedding of feasible solutions into a one dimensional feature space and one optimization problem. The embedding can be learned using standard SGD type optimization without relying on an additional optimizations within each step. Training data is produced by performing small perturbations of ground truth tracks and representing them using generalized graph differences, which is an efficient way introduced to represent the difference between two graphs. The proposed method is evaluated on DukeMTMCT with competitive results.

Abstract (translated)

URL

https://arxiv.org/abs/1908.06646

PDF

https://arxiv.org/pdf/1908.06646.pdf


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