Litcius/Paper detail

Learning Invariance From Generated Variance for Unsupervised Person Re-Identification

Hao Chen, Yaohui Wang, Benoit Lagadec, Antitza Dantcheva, François Brémond

2022IEEE Transactions on Pattern Analysis and Machine Intelligence37 citationsDOIOpen Access PDF

Abstract

This work focuses on unsupervised representation learning in person re-identification (ReID). Recent self-supervised contrastive learning methods learn invariance by maximizing the representation similarity between two augmented views of a same image. However, traditional data augmentation may bring to the fore undesirable distortions on identity features, which is not always favorable in id-sensitive ReID tasks. In this article, we propose to replace traditional data augmentation with a generative adversarial network (GAN) that is targeted to generate augmented views for contrastive learning. A 3D mesh guided person image generator is proposed to disentangle a person image into id-related and id-unrelated features. Deviating from previous GAN-based ReID methods that only work in id-unrelated space (pose and camera style), we conduct GAN-based augmentation on both id-unrelated and id-related features. We further propose specific contrastive losses to help our network learn invariance from id-unrelated and id-related augmentations. By jointly training the generative and the contrastive modules, our method achieves new state-of-the-art unsupervised person ReID performance on mainstream large-scale benchmarks.

Topics & Concepts

Computer scienceArtificial intelligenceFeature learningSimilarity (geometry)Identity (music)Generative grammarIdentification (biology)Representation (politics)Machine learningImage (mathematics)Variance (accounting)Pattern recognition (psychology)Unsupervised learningNatural language processingLawAccountingBusinessBiologyPoliticsAcousticsPolitical scienceBotanyPhysicsVideo Surveillance and Tracking MethodsFace recognition and analysisGait Recognition and Analysis