4.8 Article

Machine-Learning-Based Human Motion Recognition via Wearable Plastic-Fiber Sensing System

Journal

IEEE INTERNET OF THINGS JOURNAL
Volume 10, Issue 20, Pages 17893-17904

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2023.3277829

Keywords

Human motion recognition; MobileNetV2 network; plastic optical fiber (POF); support vector machine (SVM); transfer learning; wearable device

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This research proposes a wearable plastic-optical-fiber sensing system based on machine learning for human motion recognition. By monitoring joint positions, it can accurately identify six types of human movements. This system has great applications in human motion recognition and AR/VR.
Wearable human-machine interface (HMI) is a medium for information transmission and exchange between people and computers. It is widely used in the fields of human motion capture and recognition and augmented/virtual reality (AR/VR). This research proposes a wearable plastic-optical-fiber (POF) sensing system based on machine learning for human motion recognition. The wearable sports sleeve is designed and worn on the elbow and knee joints of human body. The wearable sensor system uses a D-shaped POF (DPOF) sensor, whose coefficient of determination (R 2) is 0.96496 and sensitivity is -0.7859% per degree. Support vector machines (SVMs), MobileNetV2 network, and transfer learning were used to identify six types of movement: walking, running, going upstairs, going downstairs, high leg lifts, and rope skipping. The accuracy of classification based on the four joint position monitoring can reach 98.28%, 98.94%, and 99.74%, respectively. The proposed POF wearable system has good applications for human motion state recognition and possesses great application potential in AR/VR.

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