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Select and Distill: Selective Dual-Teacher Knowledge Transfer for Continual Learning on Vision-Language Models

Authors :
Yu, Yu-Chu
Huang, Chi-Pin
Chen, Jr-Jen
Chang, Kai-Po
Lai, Yung-Hsuan
Yang, Fu-En
Wang, Yu-Chiang Frank
Yu, Yu-Chu
Huang, Chi-Pin
Chen, Jr-Jen
Chang, Kai-Po
Lai, Yung-Hsuan
Yang, Fu-En
Wang, Yu-Chiang Frank
Publication Year :
2024

Abstract

Large-scale vision-language models (VLMs) have shown a strong zero-shot generalization capability on unseen-domain data. However, when adapting pre-trained VLMs to a sequence of downstream tasks, they are prone to forgetting previously learned knowledge and degrade their zero-shot classification capability. To tackle this problem, we propose a unique Selective Dual-Teacher Knowledge Transfer framework that leverages the most recent fine-tuned and the original pre-trained VLMs as dual teachers to preserve the previously learned knowledge and zero-shot capabilities, respectively. With only access to an unlabeled reference dataset, our proposed framework performs a selective knowledge distillation mechanism by measuring the feature discrepancy from the dual teacher VLMs. Consequently, our selective dual-teacher knowledge distillation would mitigate catastrophic forgetting of previously learned knowledge while preserving the zero-shot capabilities from pre-trained VLMs. Through extensive experiments on benchmark datasets, we show that our proposed framework is favorable against state-of-the-art continual learning approaches for preventing catastrophic forgetting and zero-shot degradation.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438535722
Document Type :
Electronic Resource