Score: 1

An M-Health Algorithmic Approach to Identify and Assess Physiotherapy Exercises in Real Time

Published: December 11, 2025 | arXiv ID: 2512.10437v1

By: Stylianos Kandylakis , Christos Orfanopoulos , Georgios Siolas and more

Potential Business Impact:

Helps phones check your exercise form at home.

Business Areas:
mHealth Health Care, Mobile

This work presents an efficient algorithmic framework for real-time identification, classification, and evaluation of human physiotherapy exercises using mobile devices. The proposed method interprets a kinetic movement as a sequence of static poses, which are estimated from camera input using a pose-estimation neural network. Extracted body keypoints are transformed into trigonometric angle-based features and classified with lightweight supervised models to generate frame-level pose predictions and accuracy scores. To recognize full exercise movements and detect deviations from prescribed patterns, we employ a dynamic-programming scheme based on a modified Levenshtein distance algorithm, enabling robust sequence matching and localization of inaccuracies. The system operates entirely on the client side, ensuring scalability and real-time performance. Experimental evaluation demonstrates the effectiveness of the methodology and highlights its applicability to remote physiotherapy supervision and m-health applications.

Repos / Data Links

Page Count
11 pages

Category
Computer Science:
CV and Pattern Recognition