Physical Rehabilitation Exercises Classification Using Deep Learning Models

May 23, 2024ยท
Alaa Taie
,
Abdalla Hamdy
,
Moamen Zaher
,
Asmaa M. Al-Emrany
,
Omnia Saeed Mahmoud Ahmed
,
Ayman Atia
ยท 0 min read
Abstract
Physical rehabilitation plays pivotal role for restoring functionality and enhancing well-being in individuals with injuries, surgeries, or illnesses. This study introduces a framework to monitor patient progress during rehabilitation and identify the parts of skeleton for each exercise involved in each exercise. First experiment using UI- PRMD dataset, accuracies were 98.50%, 87.8%, 92.4% for LSTM, CNN-LSTM and GRU respectively. The second experiments with a collected dataset showed accuracies of 98.11% for LSTM, 71.7% for CNN-LSTM, and 96.23% for GRU, with additional promising results from DenseNet models and 3D array representations.
Type
Publication
2024 14th International Conference on Electrical Engineering (ICEENG)