Camera-Conditioned Stable Feature Generation for Isolated Camera Supervised Person Re-IDentification
Abstract
To learn camera-view invariant features for person Re-IDentification (Re-ID), the cross-camera image pairs of each person play an important role. However, such cross-view training samples could be unavailable under the ISolated Camera Supervised (ISCS) setting, e.g., a surveillance system deployed across distant scenes. To handle this challenging problem, a new pipeline is introduced by synthesizing the cross-camera samples in the feature space for model training. Specifically, the feature encoder and generator are end-to-end optimized under a novel method, Camera-Conditioned Stable Feature Generation (CCSFG). Its joint learning procedure raises concern on the stability of generative model training. Therefore, a new feature generator, -Regularized Conditional Variational Autoencoder (-Reg.~CVAE), is proposed with theoretical and experimental analysis on its robustness. Extensive experiments on two ISCS person Re-ID datasets demonstrate the superiority of our CCSFG to the competitors.
Keywords
Cite
@article{arxiv.2203.15210,
title = {Camera-Conditioned Stable Feature Generation for Isolated Camera Supervised Person Re-IDentification},
author = {Chao Wu and Wenhang Ge and Ancong Wu and Xiaobin Chang},
journal= {arXiv preprint arXiv:2203.15210},
year = {2022}
}
Comments
11 pages, 9 figures, accepted by CVPR 2022