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Engineering: Open Access(EOA)

ISSN: 2993-8643 | DOI: 10.33140/EOA

Impact Factor: 1.4

A Survey of Recent Graph-Based Methods for Skeleton- Based Action Recognition

Abstract

Abdur Rahman Siam

Skeleton-based action recognition (SBAR) leverages 3D joint trajectories to recognize human activities while offering privacy, robustness to illumination/background changes, and computational efficiency. Recent progress is dominated by spatio-temporal graph neural networks (ST-GNNs) that model the human body as a graph and learn data-adaptive connectivity, hierarchical structure, compact representations, multimodal supervision, and efficient temporal fusion. This survey focuses on five representative methods CTR-GCN, HD-GCN, InfoGCN, Language Supervised Training (LST), and Temporal Channel Aggregation (TCA- GCN) and positions them within the broader SBAR literature. We analyze modeling assumptions, architectural choices, training objectives, and empirical results on NTU RGB+D 60/120 and Northwestern- UCLA. We additionally contextualize the trajectory from dynamic topology learning to emerging foundation and sequence models reported in 2024-2025. Finally, we summarize open challenges and provide research directions for scalable, robust, and semantically grounded SBAR.

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