Back to Search Start Over

Prototype Learning for Micro-gesture Classification

Authors :
Chen, Guoliang
Wang, Fei
Li, Kun
Wu, Zhiliang
Fan, Hehe
Yang, Yi
Wang, Meng
Guo, Dan
Publication Year :
2024

Abstract

In this paper, we briefly introduce the solution developed by our team, HFUT-VUT, for the track of Micro-gesture Classification in the MiGA challenge at IJCAI 2024. The task of micro-gesture classification task involves recognizing the category of a given video clip, which focuses on more fine-grained and subtle body movements compared to typical action recognition tasks. Given the inherent complexity of micro-gesture recognition, which includes large intra-class variability and minimal inter-class differences, we utilize two innovative modules, i.e., the cross-modal fusion module and prototypical refinement module, to improve the discriminative ability of MG features, thereby improving the classification accuracy. Our solution achieved significant success, ranking 1st in the track of Micro-gesture Classification. We surpassed the performance of last year's leading team by a substantial margin, improving Top-1 accuracy by 6.13%.<br />Comment: 1st Place in Micro-gesture Classification in MiGA at IJCAI-2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.03097
Document Type :
Working Paper