Back to Search Start Over

MaskCLIP: Masked Self-Distillation Advances Contrastive Language-Image Pretraining

Authors :
Dong, Xiaoyi
Bao, Jianmin
Zheng, Yinglin
Zhang, Ting
Chen, Dongdong
Yang, Hao
Zeng, Ming
Zhang, Weiming
Yuan, Lu
Chen, Dong
Wen, Fang
Yu, Nenghai
Publication Year :
2022

Abstract

This paper presents a simple yet effective framework MaskCLIP, which incorporates a newly proposed masked self-distillation into contrastive language-image pretraining. The core idea of masked self-distillation is to distill representation from a full image to the representation predicted from a masked image. Such incorporation enjoys two vital benefits. First, masked self-distillation targets local patch representation learning, which is complementary to vision-language contrastive focusing on text-related representation. Second, masked self-distillation is also consistent with vision-language contrastive from the perspective of training objective as both utilize the visual encoder for feature aligning, and thus is able to learn local semantics getting indirect supervision from the language. We provide specially designed experiments with a comprehensive analysis to validate the two benefits. Symmetrically, we also introduce the local semantic supervision into the text branch, which further improves the pretraining performance. With extensive experiments, we show that MaskCLIP, when applied to various challenging downstream tasks, achieves superior results in linear probing, finetuning, and zero-shot performance with the guidance of the language encoder. Code will be release at \url{https://github.com/LightDXY/MaskCLIP}.<br />Comment: CVPR 2023, code is available at https://github.com/LightDXY/MaskCLIP

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2208.12262
Document Type :
Working Paper