As security issues have received widespread attention, the research on person re-identification has become more realistic, which is gradually being applied to video surveillance, intelligent security and other fields. The increasing of the number of monitoring equipments provides massive data support for research, but manual labeling or detector recognition inevitably introduces noisy labels. When training large-scale deep neural networks, as the amount of data increases, the noise of the label brings non-negligible damage to model training. In order to solve the noise label problem of person re-identification, this paper combines noise and non-noise data to train differentiated features, and proposes a noise-label adaptive pedestrian re-identification method without using additional verification sets, noise ratio, types and other priors. In addition, the method adaptively learns the weight of noise data to further reduce the influence. On the noisy Market1501 and DukeMTMC-reID data sets, the state of the art is severely affected by noise. The proposed method can improve the evaluation index by about 10% on this basis.
表 3 本文方法对比SOTA方法实验结果Table 3 Comparison of the proposed method with SOTA
表 1 在Market1501[6]上超参数α对比试验Table 1 Ablation study of α on Market1501[6]
表 2 在DukeMTMC-reID[5]上超参数α对比试验Table 2 Ablation study of α on DukeMTMC-reID[5]
图1 DukeMTMC-reID [5]数据集中遮挡严重时标签噪声示例(行人ID:0013)Fig.1 Noise label example on DukeMTMC-reID[5] when severe occlusion(ID 0013)
图2 Market1501[6]数据集中标签噪声示例(行人ID:1365)Fig.2 Noise label example on Market1501[6] when severe occlusion(ID 1365)
图3 Market1501[6]数据集训练样本损失值分布Fig.3 Training loss distribution on Market1501[6]
图4 DukeMTMC-reID[5]数据集训练样本损失值分布Fig.4 Train loss distribution on DukeMTMC-reID[5]
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图7 筛选学习网络结构Fig.7 Network architecture of screen learning module