Enhancing Physical Therapy Through Transformer-Based Models: A Study on Exercise Classification

Sep 5, 2024ยท
Abdalla Hamdy
,
Alaa Taie
,
Moamen Zaher
,
Asmaa M. Al-Emrany
,
Omnia Saeed Mahmoud Ahmed
,
Ayman Atia
ยท 0 min read
Abstract
Physical therapy is crucial for recovering and enhancing the physical functions of patients. It also improves the recovery process after injuries, surgeries, or diseases. Home-based rehabilitation has become essential in healthcare, particularly due to the limitations of traditional rehabilitation methods. This study proposes a system for monitoring patients, tracking their progress throughout rehabilitation, and identifying the skeletal points for each exercise. Also, identifying exercises based on deep learning single models, transformer models, and fused models using datasets collected by an expert physiotherapist through RGB cameras. LSTM, CNN-GRU, CNN-LSTM, GRU, and BiLSTM were applied with accuracies of 93.33%, 91.96%, 92.86%, 93.33%, 91.11% respectively. DenseNet201 achieved a higher of 96.42% and ViT-CNN with 91.71%. Furthermore, the human activity recognition transformer (HART) achieved an accuracy score of 91.96%
Type
Publication
2024 Intelligent Methods, Systems, and Applications (IMSA)