Orientation-Discriminative Feature Representation for Decentralized Pedestrian Tracking

26 Feb 2022  ·  Vikram Shree, Carlos Diaz-Ruiz, Chang Liu, Bharath Hariharan, Mark Campbell ·

This paper focuses on the problem of decentralized pedestrian tracking using a sensor network. Traditional works on pedestrian tracking usually use a centralized framework, which becomes less practical for robotic applications due to limited communication bandwidth. Our paper proposes a communication-efficient, orientation-discriminative feature representation to characterize pedestrian appearance information, that can be shared among sensors. Building upon that representation, our work develops a cross-sensor track association approach to achieve decentralized tracking. Extensive evaluations are conducted on publicly available datasets and results show that our proposed approach leads to improved performance in multi-sensor tracking.

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