Back to Search Start Over

Two-stream joint matching method based on contrastive learning for few-shot action recognition

Authors :
Deng, Long
Li, Ziqiang
Zhou, Bingxin
Chen, Zhongming
Li, Ao
Ge, Yongxin
Publication Year :
2024

Abstract

Although few-shot action recognition based on metric learning paradigm has achieved significant success, it fails to address the following issues: (1) inadequate action relation modeling and underutilization of multi-modal information; (2) challenges in handling video matching problems with different lengths and speeds, and video matching problems with misalignment of video sub-actions. To address these issues, we propose a Two-Stream Joint Matching method based on contrastive learning (TSJM), which consists of two modules: Multi-modal Contrastive Learning Module (MCL) and Joint Matching Module (JMM). The objective of the MCL is to extensively investigate the inter-modal mutual information relationships, thereby thoroughly extracting modal information to enhance the modeling of action relationships. The JMM aims to simultaneously address the aforementioned video matching problems. The effectiveness of the proposed method is evaluated on two widely used few shot action recognition datasets, namely, SSv2 and Kinetics. Comprehensive ablation experiments are also conducted to substantiate the efficacy of our proposed approach.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.04150
Document Type :
Working Paper