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5 months ago

Joint Skeletal and Semantic Embedding Loss for Micro-gesture Classification

Li Kun ; Guo Dan ; Chen Guoliang ; Peng Xinge ; Wang Meng

Joint Skeletal and Semantic Embedding Loss for Micro-gesture
  Classification

Abstract

In this paper, we briefly introduce the solution of our team HFUT-VUT for theMicros-gesture Classification in the MiGA challenge at IJCAI 2023. Themicro-gesture classification task aims at recognizing the action category of agiven video based on the skeleton data. For this task, we propose a3D-CNNs-based micro-gesture recognition network, which incorporates a skeletaland semantic embedding loss to improve action classification performance.Finally, we rank 1st in the Micro-gesture Classification Challenge, surpassingthe second-place team in terms of Top-1 accuracy by 1.10%.

Code Repositories

VUT-HFUT/MiGA2023_Track1
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
micro-gesture-recognition-on-imigue-
Top 1 Accuracy: 64.12
Top 5 Accuracy: 91.1

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Joint Skeletal and Semantic Embedding Loss for Micro-gesture Classification | Papers | HyperAI