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Adaptive machine learning algorithm employed statistical signal processing for classification of ECG signal and myoelectric signal

机译:自适应机器学习算法采用ECG信号分类统计信号处理和磁电信号

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In this research paper we present designing and evaluating the electrocardiography (ECG) and Myoelectric signal (EMG) pattern recognition methods based on the adaptive machine learning. For this theoretical model to describe how the Boundary Misclassification Risk (BMR) changes along parameters including, the adaptive learning times, the adaptive learning frequencies, the generalization ability of the predictive model, and the ratio of samples without supervised information during the adaptive learning were proposed. The models are built up based on the formulated adaptive learning process of the myoelectric signal recognition, and the classification from the measured electrocardiogram (ECG) pattern. The theoretical model can be regarded as the extensions of current statistical learning theory and domain adaption theory. In the experiment, the maximum error rate (MER), and the average error rate (AER) of the RCS is employed as the approximation of the BMR. During the experiment, MER and AER change tendency matches the theoretical BMR change tendency. For different learning time interval AER is presented, from the result tendency match with the experimental and theoretical evaluated value is confirmed. Hence, the proposed theoretical model can be used for ECG and EMG pattern matching.
机译:在本研究论文中,我们呈现了基于自适应机器学习的心电图(ECG)和肌电信号(EMG)模式识别方法的设计和评估。对于这种理论模型来描述边界错误分类风险(BMR)沿参数的变化,包括自适应学习时间,自适应学习频率,预测模型的泛化能力,以及在自适应学习期间没有监督信息的样本的比率建议的。基于肌电信号识别的配方自适应学习过程,以及来自测量的心电图(ECG)图案的分类,建立了模型。理论模型可以被视为当前统计学习理论和域适应理论的扩展。在实验中,RCS的最大误差率(MER)和平均误差率(AEN)作为BMR的近似。在实验期间,MER和AER变化趋势与理论BMR变化趋势匹配。对于不同的学习时间间隔,从结果趋势匹配与实验性和理论评估的值得到证实。因此,所提出的理论模型可用于ECG和EMG模式匹配。

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