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首页> 外文期刊>Neural Systems and Rehabilitation Engineering, IEEE Transactions on >Detection of and Compensation for EMG Disturbances for Powered Lower Limb Prosthesis Control
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Detection of and Compensation for EMG Disturbances for Powered Lower Limb Prosthesis Control

机译:电动下肢假体控制的EMG干扰的检测和补偿

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Myoelectric pattern recognition algorithms have been proposed for the control of powered lower limb prostheses, but electromyography (EMG) signal disturbances remain an obstacle to clinical implementation. To address this problem, we used a log-likelihood metric to detect simulated EMG disturbances and real disturbances acquired from EMG containing electrode shift. We found that features extracted from disturbed EMG have much lower log likelihoods than those from undisturbed signals and can be detected using a single threshold acquired from the training data. We designed a linear discriminant analysis (LDA) classifier that uses the log likelihood to decide between using a combination of EMG and mechanical sensors and using mechanical sensors only, to predict locomotion modes. When EMG contained disturbances, our classifier detected those disturbances and disregarded EMG data. Our classifier had significantly lower errors than a standard LDA classifier in the presence of EMG disturbances. The log-likelihood classifier had a low false positive threshold, and thus did not perform significantly differently from the standard LDA classifier when EMG did not contain disturbances. The log-likelihood threshold could also be applied to individual EMG channels, enabling specific channels containing EMG disturbances to be appropriately ignored when making locomotion mode predictions.
机译:已经提出了肌电模式识别算法来控制下肢动力假体,但是肌电图(EMG)信号干扰仍然是临床实施的障碍。为了解决这个问题,我们使用对数似然度量来检测模拟的EMG干扰和从包含电极移位的EMG获得的实际干扰。我们发现,从受干扰的EMG中提取的特征的对数似然率比未受干扰的信号低,并且可以使用从训练数据中获取的单个阈值进行检测。我们设计了一种线性判别分析(LDA)分类器,该分类器使用对数似然来决定使用EMG和机械传感器的组合还是仅使用机械传​​感器来预测运动模式。当EMG包含干扰时,我们的分类器会检测到这些干扰,而忽略EMG数据。在存在EMG干扰的情况下,我们的分类器的错误率明显低于标准LDA分类器。对数似然分类器的假阳性阈值低,因此,当EMG不包含干扰时,其性能与标准LDA分类器没有明显不同。对数似然阈值也可以应用于单个EMG通道,从而在做出运动模式预测时可以适当地忽略包含EMG干扰的特定通道。

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