Abstract:To solve the problem of low performance in person re-identification caused by large distribution differences between the training and testing sets in corruption scenarios, high background complexity and excessive noise types, a domain adaptive person re-identification model based on camera perception is proposed. The model aligns the image distribution of different cameras during the training phase by introducing and fully utilizing camera information. During the testing phase, temporal information is employed for ranking optimization, reducing the impact of distribution differences between the training and testing sets. The issues of background complexity and noise types are effectively addressed. The model not only effectively mitigates the impact of damaged images from the perspective of dataset processing but also significantly improves the performance of the model in corruption scenarios through quadratic weighting of sorting optimization. Experiments on Market-1501, DukeMTMC-reID and CUHK03 datasets demonstrate the effectiveness of the proposed algorithm.
杨章静, 吴数立, 黄璞, 杨国为. 基于相机感知的域自适应行人重识别模型[J]. 模式识别与人工智能, 2024, 37(5): 383-397.
YANG Zhangjing, WU Shuli, HUANG Pu, YANG Guowei. Domain Adaptive Person Re-identification Model Based on Camera Perception. Pattern Recognition and Artificial Intelligence, 2024, 37(5): 383-397.
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