Intelligent querying for target tracking in camera networks using deep Q-learning with n-step bootstrapping

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Surveillance camera networks are a useful infrastructure for various visual analytics applications, where high-level inferences and predictions could be made based on target tracking across the network. Most multi-camera tracking works focus on target re-identification and trajectory association problems to track the target. However, since camera networks can generate enormous amount of video data, inefficient schemes for making re-identification or trajectory association queries can incur prohibitively large computational requirements. In this paper, we address the problem of intelligent scheduling of re-identification queries in a multi-camera tracking setting. To this end, we formulate the target tracking problem in a camera network as an MDP and learn a reinforcement learning based policy that selects a camera for making a re-identification query. The proposed approach to camera selection does not assume the knowledge of the camera network topology but the resulting policy implicitly learns it. We have also shown that such a policy can be learnt directly from data. Using the NLPR MCT and the Duke MTMC multi-camera multi-target tracking benchmarks, we empirically show that the proposed approach substantially reduces the number of frames queried.

论文关键词:Camera networks,Deep reinforcement learning,Target tracking,Multi-camera tracking 2010 MSC: 00–01, 99–00

论文评审过程:Received 8 December 2019, Revised 20 August 2020, Accepted 14 September 2020, Available online 19 September 2020, Version of Record 2 October 2020.

论文官网地址:https://doi.org/10.1016/j.imavis.2020.104022