English

Improved Hard Example Mining by Discovering Attribute-based Hard Person Identity

Computer Vision and Pattern Recognition 2019-08-07 v3

Abstract

In this paper, we propose Hard Person Identity Mining (HPIM) that attempts to refine the hard example mining to improve the exploration efficacy in person re-identification. It is motivated by following observation: the more attributes some people share, the more difficult to separate their identities. Based on this observation, we develop HPIM via a transferred attribute describer, a deep multi-attribute classifier trained from the source noisy person attribute datasets. We encode each image into the attribute probabilistic description in the target person re-ID dataset. Afterwards in the attribute code space, we consider each person as a distribution to generate his view-specific attribute codes in different practical scenarios. Hence we estimate the person-specific statistical moments from zeroth to higher order, which are further used to calculate the central moment discrepancies between persons. Such discrepancy is a ground to choose hard identity to organize proper mini-batches, without concerning the person representation changing in metric learning. It presents as a complementary tool of hard example mining, which helps to explore the global instead of the local hard example constraint in the mini-batch built by randomly sampled identities. Extensive experiments on two person re-identification benchmarks validated the effectiveness of our proposed algorithm.

Keywords

Cite

@article{arxiv.1905.02102,
  title  = {Improved Hard Example Mining by Discovering Attribute-based Hard Person Identity},
  author = {Xiao Wang and Ziliang Chen and Rui Yang and Bin Luo and Jin Tang},
  journal= {arXiv preprint arXiv:1905.02102},
  year   = {2019}
}
R2 v1 2026-06-23T08:58:16.460Z