4.8 Article

Leader-Based Multi-Scale Attention Deep Architecture for Person Re-Identification

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2019.2928294

Keywords

Feature extraction; Cameras; Task analysis; Computer architecture; Computational modeling; Adaptation models; Clothing; Person re-identification; multi-scale deep learning; self-attention; domain generalization

Funding

  1. NSFC [61702108, 61622204, 61572138]
  2. STCSM Project [16JC1420400]
  3. Shanghai Municipal Science and Technology Major Projects [2017SHZDZX01, 2018SHZDZX01]
  4. ZJLab

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Person re-identification (re-id) aims to match people across non-overlapping camera views in a public space. This is a challenging problem because the people captured in surveillance videos often wear similar clothing. Consequently, the differences in their appearance are typically subtle and only detectable at particular locations and scales. In this paper, we propose a deep re-id network (MuDeep) that is composed of two novel types of layers - a multi-scale deep learning layer, and a leader-based attention learning layer. Specifically, the former learns deep discriminative feature representations at different scales, while the latter utilizes the information from multiple scales to lead and determine the optimal weightings for each scale. The importance of different spatial locations for extracting discriminative features is learned explicitly via our leader-based attention learning layer. Extensive experiments are carried out to demonstrate that the proposed MuDeep outperforms the state-of-the-art on a number of benchmarks and has a better generalization ability under a domain generalization setting.

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