Rehabilitation Exercise Quality Assessment through Supervised Contrastive Learning with Hard and Soft Negatives
Mark Karlov, Ali Abedi, Shehroz S. Khan

TL;DR
This paper presents a supervised contrastive learning framework with hard and soft negatives for rehabilitation exercise assessment, improving model generalization across exercise types using a spatial-temporal graph convolutional network.
Contribution
It introduces a novel contrastive learning approach tailored for limited per-exercise data, enhancing generalizability and setting new benchmarks in the field.
Findings
Outperforms existing methods on three datasets.
Reduces model complexity while maintaining accuracy.
Enhances cross-exercise generalization.
Abstract
Exercise-based rehabilitation programs have proven to be effective in enhancing the quality of life and reducing mortality and rehospitalization rates. AI-driven virtual rehabilitation, which allows patients to independently complete exercises at home, utilizes AI algorithms to analyze exercise data, providing feedback to patients and updating clinicians on their progress. These programs commonly prescribe a variety of exercise types, leading to a distinct challenge in rehabilitation exercise assessment datasets: while abundant in overall training samples, these datasets often have a limited number of samples for each individual exercise type. This disparity hampers the ability of existing approaches to train generalizable models with such a small sample size per exercise type. Addressing this issue, this paper introduces a novel supervised contrastive learning framework with hard and…
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Taxonomy
TopicsSports and Physical Education Research · Educational Technology and Pedagogy · AI and Big Data Applications
MethodsContrastive Learning
