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Distilling Visual Priors from Self-Supervised Learning

Authors :
Zhao, Bingchen
Wen, Xin
Publication Year :
2020

Abstract

Convolutional Neural Networks (CNNs) are prone to overfit small training datasets. We present a novel two-phase pipeline that leverages self-supervised learning and knowledge distillation to improve the generalization ability of CNN models for image classification under the data-deficient setting. The first phase is to learn a teacher model which possesses rich and generalizable visual representations via self-supervised learning, and the second phase is to distill the representations into a student model in a self-distillation manner, and meanwhile fine-tune the student model for the image classification task. We also propose a novel margin loss for the self-supervised contrastive learning proxy task to better learn the representation under the data-deficient scenario. Together with other tricks, we achieve competitive performance in the VIPriors image classification challenge.<br />Comment: This is the 2nd place tech report for VIPriors Image Classification Challenge ECCVW2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2008.00261
Document Type :
Working Paper