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Do Not Disturb Me: Person Re-identification Under the Interference of Other Pedestrians (2008.06963v1)

Published 16 Aug 2020 in cs.CV

Abstract: In the conventional person Re-ID setting, it is widely assumed that cropped person images are for each individual. However, in a crowded scene, off-shelf-detectors may generate bounding boxes involving multiple people, where the large proportion of background pedestrians or human occlusion exists. The representation extracted from such cropped images, which contain both the target and the interference pedestrians, might include distractive information. This will lead to wrong retrieval results. To address this problem, this paper presents a novel deep network termed Pedestrian-Interference Suppression Network (PISNet). PISNet leverages a Query-Guided Attention Block (QGAB) to enhance the feature of the target in the gallery, under the guidance of the query. Furthermore, the involving Guidance Reversed Attention Module and the Multi-Person Separation Loss promote QGAB to suppress the interference of other pedestrians. Our method is evaluated on two new pedestrian-interference datasets and the results show that the proposed method performs favorably against existing Re-ID methods.

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Authors (10)
  1. Shizhen Zhao (17 papers)
  2. Changxin Gao (76 papers)
  3. Jun Zhang (1008 papers)
  4. Hao Cheng (190 papers)
  5. Chuchu Han (13 papers)
  6. Xinyang Jiang (40 papers)
  7. Xiaowei Guo (26 papers)
  8. Wei-Shi Zheng (148 papers)
  9. Nong Sang (86 papers)
  10. Xing Sun (94 papers)
Citations (44)

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