Proceedings on Automation in Medical Engineering
Vol. 3 No. 1 (2026): Proc AUTOMED
https://doi.org/10.18416/AUTOMED.2026.2545

18th Interdisciplinary AUTOMED Symposium in Collaboration with the TC Medical Robotics, 2545

Cross-Dataset Evaluation of Sit-to-Stand Movement Classifiers for Post-Stroke Rehabilitation

Main Article Content

Lucia Palumbi (Leibniz University Hannover, Institute of Mechatronic Systems, Hanover, Germany), Timo Kuhlgatz (Leibniz University Hannover, Institute of Mechatronic Systems, Hanover, Germany), Matteo Caruso (1) Center for Automation and Robotics, Spanish National Research Council (CSIC-UPM), Madrid, Spain 2)Leibniz University Hannover, Institute of Mechatronic Systems, Hanover, Germany), Thomas Seel (Leibniz University Hannover, Institute of Mechatronic Systems, Hanover, Germany), Leon Budde (Leibniz University Hannover, Institute of Mechatronic Systems, Hanover, Germany)

Abstract

Automated assessment could support at-home post-stroke rehabilitation, yet ensuring cross-dataset generalizability is critical for real-world adoption. This study evaluates rule-based and Random Forest classifiers, trained on XSense IMU data, against the independent CeTI-Locomotion dataset. Zero-shot evaluation demonstrated the robustness of the rule-based approach (71.3% accuracy) compared to Random Forest (17.8%), which significantly improved to 58.2% with one-shot calibration. These findings indicate that generalizability is achievable through biomechanically grounded or adaptive strategies, marking a key step toward robust, clinically deployable rehabilitation systems.

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