2020
DOI: 10.3390/s20020537
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Human Body Mixed Motion Pattern Recognition Method Based on Multi-Source Feature Parameter Fusion

Abstract: Aiming at the requirement of rapid recognition of the wearer’s gait stage in the process of intelligent hybrid control of an exoskeleton, this paper studies the human body mixed motion pattern recognition technology based on multi-source feature parameters. We obtain information on human lower extremity acceleration and plantar analyze the relationship between these parameters and gait cycle studying the motion state recognition method based on feature evaluation and neural network. Based on the actual require… Show more

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Cited by 17 publications
(7 citation statements)
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“…The kinematic provided by IMU and pressure-sensitive sensors cannot accurately identify spatial position information of stroke patients, so it is necessary to introduce motion capture to make compensation. Song et al ( 2020 ), built a motion state recognition model based on feature evaluation and multi-layer BP (BackPropagation) neural network, collected kinematic, plantar pressure, and parameters collected by VICON, and performed multi-source feature parameter fusion. Finally, the two sets of multi-information source fusion models were verified, and the average recognition accuracy rate for 15 motion patterns was 95.05%.…”
Section: Motion Intention Recognition and Modeling Of Adaptive Lower ...mentioning
confidence: 99%
“…The kinematic provided by IMU and pressure-sensitive sensors cannot accurately identify spatial position information of stroke patients, so it is necessary to introduce motion capture to make compensation. Song et al ( 2020 ), built a motion state recognition model based on feature evaluation and multi-layer BP (BackPropagation) neural network, collected kinematic, plantar pressure, and parameters collected by VICON, and performed multi-source feature parameter fusion. Finally, the two sets of multi-information source fusion models were verified, and the average recognition accuracy rate for 15 motion patterns was 95.05%.…”
Section: Motion Intention Recognition and Modeling Of Adaptive Lower ...mentioning
confidence: 99%
“…The simplest approach is On-Off Control, which relies on pattern recognition to separate human intention into a several classes [106], [107]. The predefined trajectory is replayed when a class is detected.…”
Section: F Semg-based Controlmentioning
confidence: 99%
“…A BPNN is implemented by Song et al [86], for locomotion mode detection. They detected 4 static, and 11 dynamic modes, a total of 15 locomotion modes including sitting, standing, level walking, level walking with weight etc.…”
Section: ) Neural Networkmentioning
confidence: 99%