A CAM-enhancing Generative Person Re-ID Method based Global and Local Features
Angze Li, Shasha Mao, Lin Xiong, Mengnan Qi, Shuiping Gou, Licheng Jiao
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For GAN-based person re-identification, the key is to generate pedestrian images with higher identity consistency and meanwhile larger intra-class diversity. Generally, the main discriminative parts focus on some local regions from the foreground of each pedestrian image for Re-ID, and they should be irrelevant to the background. Whereas, most existing methods generate pedestrian images only based on global features, which difficultly achieves emphasizing crucial local regions and weakening the background. Based on this, we propose a CAM-enhancing generative Re-ID method in which the global and local features are jointly used. In the proposed method, an adaptive CAM-enhancing local encoder is designed to explore the significance of local appearances and enhance the effect of crucial local features in generations, where the foreground is divided into multiple local parts and separated from the background by pedestrian segmentation. Moreover, a new generation loss is proposed to supervise the identity consistency by reducing the inconsistency of crucial regions in foregrounds and meanwhile enrich the intra-class diversity by generating variant backgrounds. Experimental results indicate that the proposed method obtains better generation images and Re-ID performance than other methods.