Error-Guided Pose Augmentation: Enhancing Rehabilitation Exercise Assessment through Targeted Data Generation
Journal:
arXiv
Published Date:
Jun 11, 2025
Abstract
Effective rehabilitation assessment is essential for monitoring patient
progress, particularly in home-based settings. Existing systems often face
challenges such as data imbalance and difficulty detecting subtle movement
errors. This paper introduces Error-Guided Pose Augmentation (EGPA), a method
that generates synthetic skeleton data by simulating clinically relevant
movement mistakes. Unlike standard augmentation techniques, EGPA targets
biomechanical errors observed in rehabilitation. Combined with an
attention-based graph convolutional network, EGPA improves performance across
multiple evaluation metrics. Experiments demonstrate reductions in mean
absolute error of up to 27.6 percent and gains in error classification accuracy
of 45.8 percent. Attention visualizations show that the model learns to focus
on clinically significant joints and movement phases, enhancing both accuracy
and interpretability. EGPA offers a promising approach for improving automated
movement quality assessment in both clinical and home-based rehabilitation
contexts.