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基于外周生物信号的人类意图解码传感器融合方法的系统评价

A Systematic Review of Sensor Fusion Methods Using Peripheral Bio-Signals for Human Intention Decoding.

机构信息

Chair of Autonomous Systems and Mechatronics, Department of Electrical Engineering, Friedrich-Alexander-Universität Erlangen-Nürnberg, 91052 Erlangen, Germany.

Department of Artificial Intelligence in Biomedical Engineering, Friedrich-Alexander-Universität Erlangen-Nürnberg, 91052 Erlangen, Germany.

出版信息

Sensors (Basel). 2022 Aug 23;22(17):6319. doi: 10.3390/s22176319.

Abstract

Humans learn about the environment by interacting with it. With an increasing use of computer and virtual applications as well as robotic and prosthetic devices, there is a need for intuitive interfaces that allow the user to have an embodied interaction with the devices they are controlling. Muscle-machine interfaces can provide an intuitive solution by decoding human intentions utilizing myoelectric activations. There are several different methods that can be utilized to develop MuMIs, such as electromyography, ultrasonography, mechanomyography, and near-infrared spectroscopy. In this paper, we analyze the advantages and disadvantages of different myography methods by reviewing myography fusion methods. In a systematic review following the PRISMA guidelines, we identify and analyze studies that employ the fusion of different sensors and myography techniques, while also considering interface wearability. We also explore the properties of different fusion techniques in decoding user intentions. The fusion of electromyography, ultrasonography, mechanomyography, and near-infrared spectroscopy as well as other sensing such as inertial measurement units and optical sensing methods has been of continuous interest over the last decade with the main focus decoding the user intention for the upper limb. From the systematic review, it can be concluded that the fusion of two or more myography methods leads to a better performance for the decoding of a user's intention. Furthermore, promising sensor fusion techniques for different applications were also identified based on the existing literature.

摘要

人类通过与环境互动来了解环境。随着计算机和虚拟应用程序以及机器人和假肢设备的使用越来越多,需要直观的接口,使用户能够与他们正在控制的设备进行具身交互。肌肉-机器接口可以通过解码人类意图利用肌电活动提供直观的解决方案。有几种不同的方法可以用来开发 MuMIs,例如肌电图、超声、机械肌电图和近红外光谱。在本文中,我们通过回顾肌电融合方法来分析不同肌电方法的优缺点。在遵循 PRISMA 指南的系统评价中,我们确定并分析了使用不同传感器和肌电技术融合的研究,同时也考虑了接口的可穿戴性。我们还探讨了不同融合技术在解码用户意图方面的特性。过去十年中,肌电图、超声、机械肌电图和近红外光谱的融合以及惯性测量单元和光学传感方法等其他传感方法一直是人们关注的焦点,主要集中在解码上肢用户的意图上。从系统评价中可以得出结论,两种或更多种肌电方法的融合可以提高用户意图解码的性能。此外,还根据现有文献确定了用于不同应用的有前途的传感器融合技术。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9408/9460678/60d550e924b7/sensors-22-06319-g001.jpg

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