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脑-机和肌-机生物传感方法在上肢假肢控制中获取手势意图:综述。

Brain-machine and muscle-machine bio-sensing methods for gesture intent acquisition in upper-limb prosthesis control: a review.

机构信息

University of Bristol, Bristol, United Kingdom.

出版信息

J Med Eng Technol. 2021 Feb;45(2):115-128. doi: 10.1080/03091902.2020.1854357. Epub 2021 Jan 21.

DOI:10.1080/03091902.2020.1854357
PMID:33475039
Abstract

This paper presents a review of a number of bio-sensing methods for gesture intent signal acquisition in control tasks for upper-limb prosthesis. The paper specifically provides a breakdown of the control task in myoelectric prosthesis, and in addition, highlights and describes the importance of the acquisition of a high-quality bio-signal. The paper also describes commonly used invasive and non-invasive brain and muscle machine interfaces such as electroencephalography, electrocorticography, electroneurography, surface electromyography, sonomyography, mechanomyography, near infra-red, force sensitive resistance/pressure, and magnetoencephalography. Each modality is reviewed based on its operating principle and limitations in gesture recognition, followed by respective advantages and disadvantages. Also described within this paper, are multimodal sensing approaches, which involve data fusion of information from various sensing modalities for an enhanced neuromuscular bio-sensing source. Using a semi-systematic review methodology, we are able to derive a novel tabular approach towards contrasting the various strengths and weaknesses of the reviewed bio-sensing methods towards gesture recognition in a prosthesis interface. This would allow for a streamlined method of down selection of an appropriate bio-sensor given specific prosthesis design criteria and requirements. The paper concludes by highlighting a number of research areas that require more work for strides to be made towards improving and enhancing the connection between man and machine as it concerns upper-limb prosthesis. Such areas include classifier augmentation for gesture recognition, filtering techniques for sensor disturbance rejection, feeling of tactile sensations with an artificial limb.

摘要

本文综述了用于上肢假肢控制任务中手势意图信号采集的多种生物传感方法。本文特别提供了肌电假肢控制任务的细分,此外,还强调并描述了获取高质量生物信号的重要性。本文还描述了常用的侵入性和非侵入性脑肌接口,如脑电图、脑皮层电图、神经电图、表面肌电图、声肌图、肌电图、近红外、力敏电阻/压阻、和脑磁图。每种模式都根据其在手势识别中的工作原理和局限性进行了回顾,随后分别介绍了各自的优缺点。本文还描述了多模态传感方法,它涉及来自各种传感模式的信息融合,以增强神经肌肉生物传感源。通过使用半系统综述方法,我们能够得出一种新颖的表格方法,对比所综述的生物传感方法在假肢接口中的手势识别方面的优缺点。这将允许根据特定的假肢设计标准和要求,简化选择合适的生物传感器的方法。本文最后强调了一些需要进一步研究的领域,以便在提高和增强人机接口方面取得进展,这涉及上肢假肢。这些领域包括手势识别的分类器增强、传感器干扰抑制的滤波技术、假手的触觉感觉。

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