Open AccessProceedings Article
Spatio-Temporal Graph Scattering Transform
Chao Pan,Siheng Chen,Antonio Ortega +2 more
- 03 May 2021
TL;DR: The proposed ST-GST performs iterative applications of spatio-temporal graph wavelets and nonlinear activation functions, and is promising for the real-world scenarios with limited training data, and also allows for a theoretical analysis, which shows that the proposed ST -GST is stable to small perturbations of input signals and structures.
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Abstract: Although spatio-temporal graph neural networks have achieved great empirical success in handling multiple correlated time series, they may be impractical in some real-world scenarios due to a lack of sufficient high-quality training data. Furthermore, spatio-temporal graph neural networks lack theoretical interpretation. To address these issues, we put forth a novel mathematically designed framework to analyze spatio-temporal data. Our proposed spatio-temporal graph scattering transform (ST-GST) extends traditional scattering transform to the spatio-temporal domain. It performs iterative applications of spatio-temporal graph wavelets and nonlinear activation functions, which can be viewed as a forward pass of spatio-temporal graph convolutional networks without training. Since all the filter coefficients in ST-GST are mathematically designed, it is promising for the real-world scenarios with limited training data, and also allows for a theoretical analysis, which shows that the proposed ST-GST is stable to small perturbations of input signals and structures. Finally, our experiments show that i) ST-GST outperforms spatio-temporal graph convolutional networks by an increase of 35% in accuracy for MSR Action3D dataset; ii) it is better and computationally more efficient to design the transform based on separable spatio-temporal graphs than the joint ones; and iii) nonlinearity in ST-GST is critical to empirical performance.
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Towards To-a-T Spatio-Temporal Focus for Skeleton-Based Action Recognition
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Graph Neural Network for Spatiotemporal Data: Methods and Applications
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- 01 Jan 2024
TL;DR: A comprehensive overview of GNNs for spatiotemporal data modeling and applications. Covers graph construction, categorization and summary of existing techniques, applications in various domains, and future directions.
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Graph-Time Convolutional Neural Networks: Architecture and Theoretical Analysis
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TL;DR: The stability result shows GTCNNs are stable to spatial perturbations but there is an implicit trade-off between discriminability and robustness; i.e., the more complex the model, the less stable.
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