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Surface EMG hand gesture recognition system based on PCA and GRNN

机译:基于PCA和GRNN的表面EMG手势识别系统

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摘要

The principal component analysis method and GRNN neural network are used to construct the gesture recognition system, so as to reduce the redundant information of EMG signals, reduce the signal dimension, improve the recognition efficiency and accuracy, and enhance the feasibility of real-time recognition. Using the means of extracting key information of human motion, the specific action mode is identified. In this paper, nine static gestures are taken as samples, and the surface EMG signal of the arm is collected by the electromyography instrument to extract four kinds of characteristics of the signal. After dimension reduction and neural network learning, the overall recognition rate of the system reached 95.1%, and the average recognition time was 0.19 s.
机译:主要成分分析方法和GRNN神经网络用于构造手势识别系统,从而减少EMG信号的冗余信息,降低信号维度,提高识别效率和准确性,提高实时识别的可行性 。 使用提取人类运动的关键信息的方法,识别特定的动作模式。 在本文中,将九个静态手势作为样品,并且通过电学仪器收集臂的表面EMG信号,以提取信号的四种特性。 在减少尺寸和神经网络学习后,系统的整体识别率达到95.1%,平均识别时间为0.19秒。

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