2022
DOI: 10.3389/fbioe.2022.970859
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A comparison of contributions of individual muscle and combination muscles to interaction force prediction using KPCA-DRSN model

Abstract: Rapid and accurate prediction of interaction force is an effective way to enhance the compliant control performance. However, whether individual muscles or a combination of muscles is more suitable for interaction force prediction under different contraction tasks is of great importance in the compliant control of the wearable assisted robot. In this article, a novel algorithm that is based on sEMG and KPCA-DRSN is proposed to explore the relationship between interaction force prediction and sEMG signals. Furt… Show more

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“…It is difficult for current algorithms to balance the accuracy and real-time performance of artifact removal tasks. In recent years, our team has been committed to the research of perception and recognition of human muscle movement information, and has obtained certain results ( Lu et al, 2021 ; Lu et al, 2022a ; Lu et al, 2022b ). The problem of ECG artifact removal in sEMG is the key to hindering our further research on human motion intention prediction and muscle force estimation tasks.…”
Section: Introductionmentioning
confidence: 99%
“…It is difficult for current algorithms to balance the accuracy and real-time performance of artifact removal tasks. In recent years, our team has been committed to the research of perception and recognition of human muscle movement information, and has obtained certain results ( Lu et al, 2021 ; Lu et al, 2022a ; Lu et al, 2022b ). The problem of ECG artifact removal in sEMG is the key to hindering our further research on human motion intention prediction and muscle force estimation tasks.…”
Section: Introductionmentioning
confidence: 99%