Cross-Block Fine-Grained Semantic Cascade for Skeleton-Based Sports Action Recognition
Zhendong Liu, Haifeng Xia, Tong Guo, Libo Sun, Ming Shao, and Siyu Xia

TL;DR
This paper introduces a Cross-block Fine-grained Semantic Cascade (CFSC) module that enhances skeleton-based sports action recognition by integrating multi-level features and short-term temporal information, improving fine-grained action understanding.
Contribution
The novel CFSC module effectively captures fine-grained action details across network layers, addressing limitations of global features in sports action recognition.
Findings
Improved accuracy on FSD-10 benchmark
Effective fine-grained feature learning demonstrated
Proposed dataset FD-7 for fencing sports
Abstract
Human action video recognition has recently attracted more attention in applications such as video security and sports posture correction. Popular solutions, including graph convolutional networks (GCNs) that model the human skeleton as a spatiotemporal graph, have proven very effective. GCNs-based methods with stacked blocks usually utilize top-layer semantics for classification/annotation purposes. Although the global features learned through the procedure are suitable for the general classification, they have difficulty capturing fine-grained action change across adjacent frames -- decisive factors in sports actions. In this paper, we propose a novel ``Cross-block Fine-grained Semantic Cascade (CFSC)'' module to overcome this challenge. In summary, the proposed CFSC progressively integrates shallow visual knowledge into high-level blocks to allow networks to focus on action details.…
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Taxonomy
TopicsHuman Pose and Action Recognition
MethodsConvolution · Focus · Graph Convolutional Network
