Rehabilitation monitoring and assessment: a comparative analysis of feature engineering and machine learning algorithms on the UI-PRMD and KIMORE benchmark datasets

dc.AffiliationOctober University for modern sciences and Arts MSA
dc.contributor.authorMoamen Zaher
dc.contributor.authorAmr S. Ghoneim
dc.contributor.authorLaila Abdelhamid
dc.contributor.authorAyman Atia
dc.date.accessioned2025-02-12T08:04:11Z
dc.date.available2025-02-12T08:04:11Z
dc.date.issued2025-02-04
dc.descriptionQ2
dc.description.abstractRehabilitation is crucial for individuals recovering from injuries or illnesses. It combines medical knowledge, therapy, and technology to improve health and independence. However, a global shortage of physiotherapists makes it challenging to provide adequate rehabilitation services. Current rehabilitation research often lacks advanced computational techniques to automate exercise assessment, relying heavily on time-consuming and costly in-person sessions. This study uses computer vision and classical machine learning (ML) to monitor and evaluate physical rehabilitation exercises using skeletal data. It compares five feature extraction approaches, six feature ranking techniques, and thirteen ML algorithms to identify the most influential features for accurate exercise classification using benchmark datasets (UI-PRMD and KIMORE). The performances of feature ranking algorithms–X2, ReliefF, Gini Decrease, FCBF, Information Gain, and Information Gain Ratio–were examined alongside ML algorithms such as SVMs, RFs, KNN, LDA, and lightGBM, amongst others. ReliefF with an Extra-Tree demonstrated superior performance (classification accuracy of 99.94%) compared to state-of-the-art studies on the UI-PRMD (a 4.4% improvement). However, FCBF, alongside an Extra-Tree, demonstrated robust performance across diverse datasets, achieving 99.64% on UIPRMD (the second-best result) and 81.85% on KIMORE (the highest accuracy reported compared to state-of-the-art studies). FCBF attained robust results together with the various classifiers, averaging 92.65%.
dc.description.urihttps://www.scimagojr.com/journalsearch.php?q=21101043571&tip=sid&clean=0
dc.identifier.citationZaher, M., Ghoneim, A. S., Abdelhamid, L., & Atia, A. (2025b). Rehabilitation monitoring and assessment: a comparative analysis of feature engineering and machine learning algorithms on the UI-PRMD and KIMORE benchmark datasets. Journal of Information and Telecommunication, 1–21. https://doi.org/10.1080/24751839.2025.2454053
dc.identifier.doihttps://doi.o­g/10.1080/24751839.2025.2454053
dc.identifier.otherhttps://doi.o­g/10.1080/24751839.2025.2454053
dc.identifier.urihttps://repository.msa.edu.eg/handle/123456789/6316
dc.language.isoen_US
dc.publisherTaylor and Francis Ltd.
dc.relation.ispartofseriesJournal of Information and Telecommunication ; 2025
dc.subjectExercise classification
dc.subjectFeature Ranking
dc.subjectKinect
dc.subjectMachine Learning
dc.subjectPhysical Rehabilitation
dc.titleRehabilitation monitoring and assessment: a comparative analysis of feature engineering and machine learning algorithms on the UI-PRMD and KIMORE benchmark datasets
dc.typeArticle

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