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"Min-Ho Seo"

Article
Deep-learning-based Motion Recognition Using a Single Encoder for Hip Exoskeleton
Min-Ho Seo, Byeong-Hoon Bang, Dong-Youn Kuk, Sung Q Lee, Young-Man Choi
J. Korean Soc. Precis. Eng. 2025;42(8):589-594.
Published online August 1, 2025
DOI: https://doi.org/10.7736/JKSPE.025.019
Commercial exoskeletons currently utilize multiple sensors, including inertial measurement units, electromyography sensors, and torque/force sensors, to detect human motion. While these sensors improve motion recognition by leveraging their unique strengths, they can also lead to discomfort due to direct skin contact, added weight, and complex wiring. In this paper, we propose a simplified motion recognition method that relies solely on encoders embedded in the motors. Our approach aims to accurately classify various movements by learning their distinctive features through a deep learning model. Specifically, we employ a convolutional neural network algorithm optimized for motion classification. Experimental results show that our model can effectively differentiate between movements such as standing, lifting, level walking, and inclined walking, achieving a test accuracy of 98.76%. Additionally, by implementing a sliding window maximum algorithm that tracks three consecutive classifications, we achieved a real-time motion recognition accuracy of 97.48% with a response time of 0.25 seconds. This approach provides a cost-effective and simplified solution for lower limb motion recognition, with potential applications in rehabilitation-focused exoskeletons.
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