Skeleton-Based Transformer for Classification of Errors and Better Feedback in Low Back Pain Physical Rehabilitation Exercises
Journal:
arXiv
Published Date:
Mar 28, 2025
Abstract
Physical rehabilitation exercises suggested by healthcare professionals can
help recovery from various musculoskeletal disorders and prevent re-injury.
However, patients' engagement tends to decrease over time without direct
supervision, which is why there is a need for an automated monitoring system.
In recent years, there has been great progress in quality assessment of
physical rehabilitation exercises. Most of them only provide a binary
classification if the performance is correct or incorrect, and a few provide a
continuous score. This information is not sufficient for patients to improve
their performance. In this work, we propose an algorithm for error
classification of rehabilitation exercises, thus making the first step toward
more detailed feedback to patients. We focus on skeleton-based exercise
assessment, which utilizes human pose estimation to evaluate motion. Inspired
by recent algorithms for quality assessment during rehabilitation exercises, we
propose a Transformer-based model for the described classification. Our model
is inspired by the HyperFormer method for human action recognition, and adapted
to our problem and dataset. The evaluation is done on the KERAAL dataset, as it
is the only medical dataset with clear error labels for the exercises, and our
model significantly surpasses state-of-the-art methods. Furthermore, we bridge
the gap towards better feedback to the patients by presenting a way to
calculate the importance of joints for each exercise.