CVLGIVSPOct 19, 2019

Sensor fusion using EMG and vision for hand gesture classification in mobile applications

arXiv:1910.11126v1
Originality Synthesis-oriented
AI Analysis

This work addresses gesture recognition for assisted living and healthcare, but it is incremental as it combines existing sensors with a new dataset.

The paper tackled hand gesture classification for mobile applications by fusing EMG and vision sensors, achieving an accuracy of 85% with improvements of 13% and 11% over individual sensors.

The discrimination of human gestures using wearable solutions is extremely important as a supporting technique for assisted living, healthcare of the elderly and neurorehabilitation. This paper presents a mobile electromyography (EMG) analysis framework to be an auxiliary component in physiotherapy sessions or as a feedback for neuroprosthesis calibration. We implemented a framework that allows the integration of multisensors, EMG and visual information, to perform sensor fusion and to improve the accuracy of hand gesture recognition tasks. In particular, we used an event-based camera adapted to run on the limited computational resources of mobile phones. We introduced a new publicly available dataset of sensor fusion for hand gesture recognition recorded from 10 subjects and used it to train the recognition models offline. We compare the online results of the hand gesture recognition using the fusion approach with the individual sensors with an improvement in the accuracy of 13% and 11%, for EMG and vision respectively, reaching 85%.

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