Abstract
The dynamic detection of human motion is important, which is widely applied in the fields of motion state capture and rehabilitation engineering. In this study, based on multimodal information of surface electromyography (sEMG) signals of upper limb and triaxial acceleration and plantar pressure signals of lower limb, the effective virtual driving control and gait recognition methods were proposed. The effective way of wearable human posture detection was also constructed. Firstly, the moving average window and threshold comparison were used to segment the sEMG signals of the upper limb. The standard deviation and singular values of wavelet coefficients were extracted as the features. After the training and classification by optimized support vector machine (SVM) algorithm, the real-time detection and analysis of three virtual driving actions were performed. The average identification accuracy was 90.90%. Secondly, the mean, standard deviation, variance, and wavelet energy spectrum of triaxial acceleration were extracted, and these parameters were combined with plantar pressure as the gait features. The optimized SVM was selected for the gait identification, and the average accuracy was 90.48%. The experimental results showed that, through different combinations of wearable sensors on the upper and lower limbs, the motion posture information could be dynamically detected, which could be used in the design of virtual rehabilitation system and walking auxiliary system.
Highlights
A human posture detection system means identifying the change of posture in a specified area and detecting the range of human motion
Powell et al used the virtual reality (VR) environment to perform myoelectricity control training based on pattern recognition, which improved the consistency and discrimination of myoelectricity signals of stump muscles in amputees [5]. e introduction of the Surface electromyography (sEMG) signal analysis implements intelligent confirmation of system instructions, which can solve the problem of limb dyskinesia
Twelve subjects were enrolled in the virtual driving control and gait experiment. e subjects consisted of six males and six females ranging in age from 21 to 27 years
Summary
Received 7 August 2020; Revised 20 November 2020; Accepted 14 March 2021; Published 25 March 2021. In this study, based on multimodal information of surface electromyography (sEMG) signals of upper limb and triaxial acceleration and plantar pressure signals of lower limb, the effective virtual driving control and gait recognition methods were proposed. E effective way of wearable human posture detection was constructed. The mean, standard deviation, variance, and wavelet energy spectrum of triaxial acceleration were extracted, and these parameters were combined with plantar pressure as the gait features. E optimized SVM was selected for the gait identification, and the average accuracy was 90.48%. E experimental results showed that, through different combinations of wearable sensors on the upper and lower limbs, the motion posture information could be dynamically detected, which could be used in the design of virtual rehabilitation system and walking auxiliary system The mean, standard deviation, variance, and wavelet energy spectrum of triaxial acceleration were extracted, and these parameters were combined with plantar pressure as the gait features. e optimized SVM was selected for the gait identification, and the average accuracy was 90.48%. e experimental results showed that, through different combinations of wearable sensors on the upper and lower limbs, the motion posture information could be dynamically detected, which could be used in the design of virtual rehabilitation system and walking auxiliary system
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