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Classification of forearm action surface EMG signals based on fractal dimension 被引量:1
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作者 胡晓 王志中 任小梅 《Journal of Southeast University(English Edition)》 EI CAS 2005年第3期324-329,共6页
Surface electromyogram (EMG) signals were identified by fractal dimension.Two patterns of surface EMG signals were acquired from 30 healthy volunteers' right forearm flexor respectively in the process of forearm su... Surface electromyogram (EMG) signals were identified by fractal dimension.Two patterns of surface EMG signals were acquired from 30 healthy volunteers' right forearm flexor respectively in the process of forearm supination (FS) and forearm pronation (FP).After the raw action surface EMG (ASEMG) signal was decomposed into several sub-signals with wavelet packet transform (WPT),five fractal dimensions were respectively calculated from the raw signal and four sub-signals by the method based on fuzzy self-similarity.The results show that calculated from the sub-signal in the band 0 to 125 Hz,the fractal dimensions of FS ASEMG signals and FP ASEMG signals distributed in two different regions,and its error rate based on Bayes decision was no more than 2.26%.Therefore,the fractal dimension is an appropriate feature by which an FS ASEMG signal is distinguished from an FP ASEMG signal. 展开更多
关键词 action surface electrolnyogram (asemg) signal: fractal dimension: wavelet packet transform(WPT) fuzzy self-similarity Bayes decision
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基于EMD分解的表面肌电信号动作模式识别
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作者 时改杰 雷敏 孟光 《振动与冲击》 EI CSCD 北大核心 2008年第11期64-66,76,共4页
从非平稳非线性的角度出发,将经验模式分解方法与最大李雅普诺夫指数相结合,对前臂运动时的表面肌电信号进行分析研究,并取得了很好的动作识别效果,研究结果表明该方法可为提高动作表面肌电信号的识别率提供一种新的研究手段。
关键词 动作表面肌电信号 经验模式分解 最大李雅普诺夫指数 BP神经网络
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