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Single channel surface electromyography blind recognition model based on watermarking

机译:基于水印的单通道表面肌电图盲识别模型

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A single channel electromyography blind recognition model based on watermarking is proposed in this paper. Single Channel Independent Component Analysis is adopted to avoid complicated circuit connection and the unreliability of hardware and reduce the noise which accompanied with surface Electromyography (sEMG) signals. Embedded watermarking is applied to solve the problem of blind source separation disorder. A self adaptive neural network and some eigenvectors are applied in sEMG features classification. From the classification results, hand gestures can be recognized. In consideration of time-scale synchronization attack, the host sEMG signals are transformed into wavelet domain and the synchronization codes are embedded. The experiment results show that the model proposed in this paper is penetrable against most common signal processing, and can recognize the hand gesture accurately.
机译:提出了一种基于水印的单通道肌电图盲识别模型。采用单通道独立分量分析可避免复杂的电路连接和硬件的不可靠性,并减少表面肌电图(sEMG)信号所伴随的噪声。嵌入式水印技术被用来解决盲源分离无序的问题。自适应神经网络和一些特征向量被应用于sEMG特征分类。根据分类结果,可以识别手势。考虑到时标同步攻击,将主机sEMG信号转换为小波域,并嵌入同步代码。实验结果表明,本文提出的模型对大多数常见信号处理均具有良好的穿透性,能够准确识别手势。

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