Literature DB >> 33745104

Effective recognition of human lower limb jump locomotion phases based on multi-sensor information fusion and machine learning.

Yanzheng Lu1, Hong Wang2, Fo Hu1, Bin Zhou1, Hailong Xi1.   

Abstract

Jump locomotion is the basic movement of human. However, no thorough research on the recognition of jump sub-phases has been carried so far. This paper aims to use multi-sensor information fusion and machine learning to recognize the human jump phase, which is crucial to the development of exoskeleton that assists jumping. The method of information fusion for sensors including sEMG, IMU, and footswitch sensor is studied. The footswitch signals are filtered by median filter. A processing method of synthesizing Euler angles into phase angle is proposed, which is beneficial to data integration. The jump locomotion is creatively segmented into five phases. The onset and offset of active segment are detected by sample entropy of sEMG and standard deviation of acceleration signal. The features are extracted from analysis windows using multi-sensor information fusion, and the dimension of feature matrix is selected. By comparing the performances of state-of-the-art machine learning classifiers, feature subsets of sEMG, IMU, and footswitch signals are selected from time domain features in a series of analysis window parameters. The average recognition accuracy of sEMG and IMU is 91.76% and 97.68%, respectively. When using the combination of sEMG, IMU, and footswitch signals, the average accuracy is 98.70%, which outperforms the combination of sEMG and IMU (97.97%, p < 0.01). Graphical Abstract The sub-phases of human locomotion are recognized based on multi-sensor information fusion and machine learning method. The feature data of the sub-phases is visualized in 3-dimensional space. The predicted states and the true states in a complete jump are compared along the time axis.

Entities:  

Keywords:  Jump phase; Machine learning; Multi-sensor information fusion; Sample entropy; Surface electromyography

Year:  2021        PMID: 33745104     DOI: 10.1007/s11517-021-02335-9

Source DB:  PubMed          Journal:  Med Biol Eng Comput        ISSN: 0140-0118            Impact factor:   2.602


  18 in total

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2.  Simultaneous and proportional force estimation for multifunction myoelectric prostheses using mirrored bilateral training.

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Authors:  Dario F Cappa; David G Behm
Journal:  J Strength Cond Res       Date:  2011-10       Impact factor: 3.775

4.  Detection of and Compensation for EMG Disturbances for Powered Lower Limb Prosthesis Control.

Authors:  John A Spanias; Eric J Perreault; Levi J Hargrove
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2015-03-27       Impact factor: 3.802

5.  IMU-Based Wrist Rotation Control of a Transradial Myoelectric Prosthesis.

Authors:  Daniel A Bennett; Michael Goldfarb
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2017-03-15       Impact factor: 3.802

6.  Invariant Surface EMG Feature Against Varying Contraction Level for Myoelectric Control Based on Muscle Coordination.

Authors:  Jiayuan He; Dingguo Zhang; Xinjun Sheng; Shunchong Li; Xiangyang Zhu
Journal:  IEEE J Biomed Health Inform       Date:  2014-06-30       Impact factor: 5.772

7.  Ambulatory activity classification with dendogram-based support vector machine: Application in lower-limb active exoskeleton.

Authors:  Oishee Mazumder; Ananda Sankar Kundu; Prasanna Kumar Lenka; Subhasis Bhaumik
Journal:  Gait Posture       Date:  2016-08-21       Impact factor: 2.840

8.  Conditioning exercises in ski jumping: biomechanical relationship of squat jumps, imitation jumps, and hill jumps.

Authors:  Silvio Lorenzetti; Fabian Ammann; Sabrina Windmüller; Ramona Häberle; Sören Müller; Micah Gross; Michael Plüss; Stefan Plüss; Berni Schödler; Klaus Hübner
Journal:  Sports Biomech       Date:  2017-11-22       Impact factor: 2.832

9.  Intuitive control of a powered prosthetic leg during ambulation: a randomized clinical trial.

Authors:  Levi J Hargrove; Aaron J Young; Ann M Simon; Nicholas P Fey; Robert D Lipschutz; Suzanne B Finucane; Elizabeth G Halsne; Kimberly A Ingraham; Todd A Kuiken
Journal:  JAMA       Date:  2015-06-09       Impact factor: 56.272

10.  Evaluation of surface EMG-based recognition algorithms for decoding hand movements.

Authors:  Sara Abbaspour; Maria Lindén; Hamid Gholamhosseini; Autumn Naber; Max Ortiz-Catalan
Journal:  Med Biol Eng Comput       Date:  2019-11-21       Impact factor: 2.602

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