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VLSI implementation for R-wave detection and heartbeat classification of ECG adaptive sampling signals

机译:VLSI实现对ECG自适应采样信号的R波检测和心跳分类

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Heartbeat classification and R-wave location have been widely used to detect people's health condition. And battery-power devices are mainly applied to wearable scenario, which can monitor people's health all day long, so high energy efficiency is very important under such circumstance. This paper proposes an improved DWT (Discrete Wavelet Transform) algorithm to obtain time-frequency characteristics of adaptive sampling ECG signals to locate the R-waves and compute RR-intervals, and further applies KNN (K-Nearest Neighbor) as a classifier to classify heartbeats, then presents a power-efficient VLSI architecture for the proposed algorithms. Experiments with the MIT-BIH Database show that the proposed DWT algorithm obtains Se (sensitivity) of 96.29% and Pp (positive predictive) of 90.26% compared to 66.44% and 70.43% respectively by the original DWT algorithm under noise level of SNR=8.And the accuracy of the heartbeat classification is 87.7%. The VLSI is implemented using SMIC 65nm CMOS technology and the power consumption is 112.7μ W at 2 alternate frequencies of 60 and 360 Hz.
机译:心跳分类和R波定位已被广泛用于检测人们的健康状况。电池电源装置主要应用于可穿戴场景,可以全天监测人们的健康,因此在这种情况下,高能量效率非常重要。本文提出了一种改进的DWT(离散小波变换)算法,获得自适应采样ECG信号的时间频率特性来定位R波和计算RR间隔,并且进一步将KNN(k最近邻居)应用于分类器以进行分类Heartbeats,然后为所提出的算法提出了一种高效的VLSI架构。使用MIT-BIH数据库的实验表明,当噪声水平下,所提出的DWT算法在96.29 %的96.29 %和PP(阳性预测)中获得96.29 %和pp(阳性预测)的PP(阳性预测)相比,噪声水平下的原始DWT算法分别为66.44%和70.43 % SNR = 8.心跳分类的准确性为87.7 %。使用SMIC 65nm CMOS技术实现VLSI,功耗为112.7μW,在60和360 Hz的2个替代频率下。

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