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A case study on tuning artificial neural networks to recognize signal patterns of hand motions

机译:调整人工神经网络识别手动运动信号模式的案例研究

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This paper presents the development of artificial neural networks (ANN) as pattern recognition systems to classify surface electromyography signals (sEMG) into nine select hand motions from seven subjects. Multiple networks were designed to determine how well a network could adapt to signals from different subjects. This was achieved by developing multiple networks with different combinations of the volunteers for training. Each network was tested with signals from all volunteers to determine how well they could adapt to new subjects. It was found that ANNs trained using only one or two subjects would perform exceptionally well when tested with signals from the same subjects but relatively poorly when tested with signals from new subjects. As the number of subjects used for training increased, the ability of the network to accurately classify the signals from the trainees decreased but their ability to adapt to signals from new subjects increased. Solely based on these results, it can be inferred that ANNs developed using signals from a large amount of subjects could be used to accurately classify signals from completely new subjects. Research presented in this paper has potential to be further developed as a basis for utilizing sEMG as control signals in electric devices such as myoelectric prosthesis or humanoid control.
机译:本文介绍了人工神经网络(ANN)作为模式识别系统,将表面电学信号(SEMG)分类为七个受试者的九个选择手动运动。旨在确定网络如何适应来自不同主题的信号的网络。这是通过开发具有不同组合的志愿者进行培训的多个网络来实现的。使用来自所有志愿者的信号测试每个网络,以确定它们如何适应新的科目。发现使用仅在来自来自新对象的信号测试时使用来自相同主题的信号而且相对较差的信号进行训练的ANNS将在出现良好的情况下进行。随着用于培训的受试者的数量增加,网络能够准确地对来自学员的信号进行准确地分类,但它们适应来自新科目的信号的能力增加。仅基于这些结果,可以推断使用来自大量受试者的信号开发的ANN可用于准确地分类来自全新对象的信号。本文提出的研究具有进一步开发的潜力,以利用SEMG作为电气设备中的控制信号,例如肌电假体或人型控制。

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