TAGPerson: A Target-Aware Generation Pipeline for Person Re-identification
Kai Chen, Weihua Chen, Tao He, Rong Du, Fan Wang, Xiuyu Sun, Yuchen, Guo, Guiguang Ding

TL;DR
This paper introduces TAGPerson, a target-aware synthetic image generation pipeline for person re-identification that adapts to target scenes, reducing domain gap and improving ReID performance.
Contribution
It proposes a novel parameterized rendering method that generates target-aware synthetic images by extracting scene information, enhancing ReID accuracy.
Findings
Target-aware synthetic images outperform generalized ones on MSMT17.
The method achieves 47.5% rank-1 accuracy compared to 40.9%.
The toolkit allows customizable synthetic image generation for ReID.
Abstract
Nowadays, real data in person re-identification (ReID) task is facing privacy issues, e.g., the banned dataset DukeMTMC-ReID. Thus it becomes much harder to collect real data for ReID task. Meanwhile, the labor cost of labeling ReID data is still very high and further hinders the development of the ReID research. Therefore, many methods turn to generate synthetic images for ReID algorithms as alternatives instead of real images. However, there is an inevitable domain gap between synthetic and real images. In previous methods, the generation process is based on virtual scenes, and their synthetic training data can not be changed according to different target real scenes automatically. To handle this problem, we propose a novel Target-Aware Generation pipeline to produce synthetic person images, called TAGPerson. Specifically, it involves a parameterized rendering method, where the…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Neural Network Applications · Human Pose and Action Recognition
