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Precise Recognition of Complicated hand Operations Based on EEG and Master-Slave Neural Network

机译:基于EEG和主从神经网络的复杂手术的精确识别

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As a good classifier, BP neural network has been applied in many engineering research questions. However, because of some inherent shortages, especially chaotic behaviors in the network learning, it is very difficult or impossible to apply the artificial neural network into the precise recognition of the complicated hand operations based on Electroencephalography (simply denoted as EEG). Based on good properties of the Hopfield neural network, a new master-slave neural network model (simply denoted as MSNN) is presented in this paper firstly, whose master network is two Hopfield networks, and the other slave network is a BP network, respectively. After its structure had been innovatively designed, the training algorithm of the MSNN was simply discussed. And then, a two-channel EEG measurement system was set up, and the feature of the related EEG signals extracted. At last, some complicated hand operations are respectively recognized by using the MSNN and BP neural network. The comparable analysis results showed that the MSNN had a better asymptotic convergence rate and a higher mapping precision, so that it gave higher recognition possibilities than the BP network did, whose recognition possibility was improved from 50%, 40%, 40%, 40%, 50%, 40%, and 50% to 70%, 60%, 70%, 70%, 80%, 60%, and 80% for grasping, relaxation, dynamic grasping, dynamic loosing, grasping a small bar, grasping a hard paper, and grasping a baseball of the seven complicated hand operations, respectively.
机译:作为一名优秀的分类器,BP神经网络已在许多工程研究问题上。但是,由于一些固有的不足,特别是混沌行为在网络学习的,这是非常困难的或不可能的人工神经网络应用到基于脑电复杂手操作的精确识别(简记为EEG)。基于所述Hopfield神经网络,新的主从式神经网络模型(简单地表示为MSNN)的良好的特性示于本文首先,其主网络是2个的Hopfield网络,以及其它从网络是BP网络,分别。其结构已被创新设计后,MSNN的训练算法简单地讨论。然后,一个两通道EEG测量系统设置,并提取相关的EEG信号的特征。最后,一些复杂的手操作分别通过MSNN和BP神经网络识别。可比分析结果表明,MSNN有一个更好的渐近收敛速度和较高的精密测绘,以便它给了较高的识别可能性比BP网络一样,它的识别可能性从50%,40%,40%,40%提高,50%,40%,和50%至70%,60%,70%,70%,80%,60%,和用于抓握,松弛,动态把持,动态松动,抓小杆80%,抓硬质纸,并抓七个复杂的手工操作的棒球,分别。

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