Improved Baselines with Momentum Contrastive Learning
Xinlei Chen, Haoqi Fan, Ross Girshick, Kaiming He
Abstract
Contrastive unsupervised learning has recently shown encouraging progress, e.g., in Momentum Contrast (MoCo) and SimCLR. In this note, we verify the effectiveness of two of SimCLR's design improvements by implementing them in the MoCo framework. With simple modifications to MoCo---namely, using an MLP projection head and more data augmentation---we establish stronger baselines that outperform SimCLR and do not require large training batches. We hope this will make state-of-the-art unsupervised learning research more accessible. Code will be made public.
Topics & Concepts
Computer scienceProjection (relational algebra)Contrast (vision)Momentum (technical analysis)Code (set theory)Artificial intelligenceMachine learningSimple (philosophy)Natural language processingAlgorithmProgramming languageEconomicsSet (abstract data type)EpistemologyPhilosophyFinanceMultimodal Machine Learning ApplicationsSpeech Recognition and SynthesisDomain Adaptation and Few-Shot Learning