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Complementary Data Augmentation for Cloth-Changing Person Re-Identification

Xuemei Jia, Xian Zhong, Mang Ye, Wenxuan Liu, Wenxin Huang

2022IEEE Transactions on Image Processing74 citationsDOI

Abstract

This paper studies the challenging person re-identification (Re-ID) task under the cloth-changing scenario, where the same identity (ID) suffers from uncertain cloth changes. To learn cloth- and ID-invariant features, it is crucial to collect abundant training data with varying clothes, which is difficult in practice. To alleviate the reliance on rich data collection, we reinforce the feature learning process by designing powerful complementary data augmentation strategies, including positive and negative data augmentation. Specifically, the positive augmentation fulfills the ID space by randomly patching the person images with different clothes, simulating rich appearance to enhance the robustness against clothes variations. For negative augmentation, its basic idea is to randomly generate out-of-distribution synthetic samples by combining various appearance and posture factors from real samples. The designed strategies seamlessly reinforce the feature learning without additional information introduction. Extensive experiments conducted on both cloth-changing and -unchanging tasks demonstrate the superiority of our proposed method, consistently improving the accuracy over various baselines.

Topics & Concepts

Computer scienceRobustness (evolution)ClothingArtificial intelligenceIdentification (biology)Task (project management)Machine learningTraining setComputer visionPattern recognition (psychology)EngineeringArchaeologySystems engineeringHistoryBotanyBiologyGeneChemistryBiochemistryVideo Surveillance and Tracking MethodsFace recognition and analysisHuman Pose and Action Recognition
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