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Combining accelerometer data with Gabor energy feature vectors for body movements classification in ambulatory ECG signals

机译:将加速度计数据与Gabor能量特征向量相结合以对动态ECG信号中的人体运动进行分类

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Wearable ambulatory ECG (A-ECG) signals obtained using wearable ECG recorders inherently contain the motion artifacts due to various body movements of the subject. Classification of four such body movement activities (BMA) — left arm up-down, right arm up-down, waist twisting and walking-of five healthy subjects has been performed using artificial neural networks (ANN). The accelerometer data and the Gabor energy feature vectors have been combined to train the ANN. The overall BMA classification accuracy achieved by the ANN classifier is over 95%.
机译:使用可穿戴式ECG记录器获得的可穿戴式动态ECG(A-ECG)信号由于对象的各种身体运动而固有地包含运动伪影。已经使用人工神经网络(ANN)对五种健康受试者的四个此类身体运动活动(BMA)进行了分类-左臂上下运动,右臂上下运动,腰部扭曲和步行。加速度计数据和Gabor能量特征向量已组合在一起以训练ANN。 ANN分类器实现的总体BMA分类准确性超过95%。

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