KGS-GCN: Enhancing Sparse Skeleton Sensing via Kinematics-Driven Gaussian Splatting and Probabilistic Topology for Action Recognition
arXiv cs.CV / 3/19/2026
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Key Points
- The paper proposes KGS-GCN, a graph convolutional network that converts sparse skeleton data into continuous heatmaps using a kinematics-driven Gaussian splatting module that derives anisotropic covariances from joint velocities.
- It introduces a probabilistic topology construction that learns an adaptive adjacency matrix by measuring Bhattacharyya distances between joint Gaussian distributions, enabling flexible long-range dependencies beyond fixed sensor topologies.
- A visual context gating mechanism modulates the GCN backbone with rendered visual features to better capture spatiotemporal dynamics.
- Empirical results show the approach improves modeling of complex dynamics and robustness to low-fidelity sensing, addressing the sparsity and rigidity of traditional skeleton data.
- The method provides a practical pathway to enhance perceptual reliability in real-world sensing applications such as human-computer interaction and surveillance.
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