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Multidimensional Refinement Graph Convolutional Network With Robust Decouple Loss for Fine-Grained Skeleton-Based Action Recognition

Sheng-Lan Liu, Yuning Ding, Jinrong Zhang, Kaiyuan Liu, Sifan Zhang, Feilong Wang, Gao Huang

2024IEEE Transactions on Neural Networks and Learning Systems13 citationsDOI

Abstract

Graph convolutional networks (GCNs) have been widely used in skeleton-based action recognition. However, existing approaches are limited in fine-grained action recognition due to the similarity of interclass data. Moreover, the noisy data from pose extraction increase the challenge of fine-grained recognition. In this work, we propose a flexible attention block called channel-variable spatial-temporal attention (CVSTA) to enhance the discriminative power of spatial-temporal joints and obtain a more compact intraclass feature distribution. Based on CVSTA, we construct a multidimensional refinement GCN (MDR-GCN) that can improve the discrimination among channel-, joint-, and frame-level features for fine-grained actions. Furthermore, we propose a robust decouple loss (RDL) that significantly boosts the effect of the CVSTA and reduces the impact of noise. The proposed method combining MDR-GCN with RDL outperforms the known state-of-the-art skeleton-based approaches on fine-grained datasets, FineGym99 and FSD-10, and also on the coarse NTU-RGB + D 120 dataset and NTU-RGB + D X-view version. Our code is publicly available at https://github.com/dingyn-Reno/MDR-GCN.

Topics & Concepts

Computer scienceAction recognitionSkeleton (computer programming)GraphConvolutional neural networkArtificial intelligencePattern recognition (psychology)Theoretical computer scienceProgramming languageClass (philosophy)Human Pose and Action RecognitionAnomaly Detection Techniques and ApplicationsGait Recognition and Analysis
Multidimensional Refinement Graph Convolutional Network With Robust Decouple Loss for Fine-Grained Skeleton-Based Action Recognition | Litcius