Graph-Based Adversarial Domain Generalization with Anatomical Correlation Knowledge for Cross-User Human Activity Recognition
Xiaozhou Ye, Kevin I-Kai Wang

TL;DR
This paper introduces GNN-ADG, a graph neural network method that uses anatomical correlation knowledge and adversarial training to improve cross-user generalization in sensor-based human activity recognition, addressing variability issues.
Contribution
The paper proposes a novel GNN-based approach that models anatomical relationships and employs adversarial learning for robust cross-user HAR without target data.
Findings
Effective cross-user generalization demonstrated
Models outperform existing methods on benchmark datasets
Holistic integration of spatial, functional, and lateral correlations
Abstract
Cross-user variability poses a significant challenge in sensor-based Human Activity Recognition (HAR) systems, as traditional models struggle to generalize across users due to differences in behavior, sensor placement, and data distribution. To address this, we propose GNN-ADG (Graph Neural Network with Adversarial Domain Generalization), a novel method that leverages both the strength from both the Graph Neural Networks (GNNs) and adversarial learning to achieve robust cross-user generalization. GNN-ADG models spatial relationships between sensors on different anatomical body parts, extracting three types of Anatomical Units: (1) Interconnected Units, capturing inter-relations between neighboring sensors; (2) Analogous Units, grouping sensors on symmetrical or functionally similar body parts; and (3) Lateral Units, connecting sensors based on their position to capture region-specific…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Human Pose and Action Recognition · Anomaly Detection Techniques and Applications
