Litcius/Paper detail

Mutual Contrastive Learning for Visual Representation Learning

Chuanguang Yang, Zhulin An, Linhang Cai, Yongjun Xu

2022Proceedings of the AAAI Conference on Artificial Intelligence78 citationsDOIOpen Access PDF

Abstract

We present a collaborative learning method called Mutual Contrastive Learning (MCL) for general visual representation learning. The core idea of MCL is to perform mutual interaction and transfer of contrastive distributions among a cohort of networks. A crucial component of MCL is Interactive Contrastive Learning (ICL). Compared with vanilla contrastive learning, ICL can aggregate cross-network embedding information and maximize the lower bound to the mutual information between two networks. This enables each network to learn extra contrastive knowledge from others, leading to better feature representations for visual recognition tasks. We emphasize that the resulting MCL is conceptually simple yet empirically powerful. It is a generic framework that can be applied to both supervised and self-supervised representation learning. Experimental results on image classification and transfer learning to object detection show that MCL can lead to consistent performance gains, demonstrating that MCL can guide the network to generate better feature representations. Code is available at https://github.com/winycg/MCL.

Topics & Concepts

Computer scienceFeature learningFeature (linguistics)Artificial intelligenceRepresentation (politics)EmbeddingMutual informationTransfer of learningObject (grammar)Machine learningLearning objectPattern recognition (psychology)Natural language processingPoliticsPhilosophyLinguisticsPolitical scienceLawDomain Adaptation and Few-Shot LearningMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval Techniques