Enhancing Person Re-Identification Performance Through In Vivo Learning.

Journal: IEEE transactions on image processing : a publication of the IEEE Signal Processing Society
PMID:

Abstract

This research investigates the potential of in vivo learning to enhance visual representation learning for image-based person re-identification (re-ID). Compared to traditional self-supervised learning (which require external data), the introduced in vivo learning utilizes supervisory labels generated from pedestrian images to improve re-ID accuracy without relying on external data sources. Three carefully designed in vivo learning tasks, leveraging statistical regularities within images, are proposed without the need for laborious manual annotations. These tasks enable feature extractors to learn more comprehensive and discriminative person representations by jointly modeling various aspects of human biological structure information, contributing to enhanced re-ID performance. Notably, the method seamlessly integrates with existing re-ID frameworks, requiring minimal modifications and no additional data beyond the existing training set. Extensive experiments on diverse datasets, including Market1501, CUHK03-NP, Celeb-reID, Celeb-reid-light, PRCC, and LTCC, demonstrate substantial enhancements in rank-1 precision compared to state-of-the-art methods.

Authors

  • Yan Huang
    Department of Neurology, University of Texas Health Science Center at Houston, Houston, TX.
  • Zhang Zhang
    c BIG Data Center, Beijing Institute of Genomics (BIG) , Chinese Academy of Sciences , Beijing , China.
  • Qiang Wu
    Department of Radiotherapy, West China Hospital, Sichuan University, Chengdu, PR China; Lung Cancer Center, West China Hospital, Sichuan University, Chengdu, PR China.
  • Yi Zhong
    Department of Chinese Medicine Science & Engineering,Zhejiang University Hangzhou 310058,China.
  • Liang Wang
    Information Department, Dazhou Central Hospital, Dazhou 635000, China.