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A Discrete Curvature Estimation Based Low-Distortion Adaptive Savitzky–Golay Filter for ECG Denoising

机译:基于离散曲率估计的低失真自适应Savitzky-Golay滤波器用于ECG去噪

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摘要

Electrocardiogram (ECG) sensing is an important application for the diagnosis of cardiovascular diseases. Recently, driven by the emerging technology of wearable electronics, massive wearable ECG sensors are developed, which however brings additional sources of noise contamination on ECG signals from these wearable ECG sensors. In this paper, we propose a new low-distortion adaptive Savitzky-Golay (LDASG) filtering method for ECG denoising based on discrete curvature estimation, which demonstrates better performance than the state of the art of ECG denoising. The standard Savitzky-Golay (SG) filter has a remarkable performance of data smoothing. However, it lacks adaptability to signal variations and thus often induces signal distortion for high-variation signals such as ECG. In our method, the discrete curvature estimation is adapted to represent the signal variation for the purpose of mitigating signal distortion. By adaptively designing the proper SG filter according to the discrete curvature for each data sample, the proposed method still retains the intrinsic advantage of SG filters of excellent data smoothing and further tackles the challenge of denoising high signal variations with low signal distortion. In our experiment, we compared our method with the EMD-wavelet based method and the non-local means (NLM) denoising method in the performance of both noise elimination and signal distortion reduction. Particularly, for the signal distortion reduction, our method decreases in MSE by 33.33% when compared to EMD-wavelet and by 50% when compared to NLM, and decreases in PRD by 18.25% when compared to EMD-wavelet and by 25.24% when compared to NLM. Our method shows high potential and feasibility in wide applications of ECG denoising for both clinical use and consumer electronics.
机译:心电图(ECG)感应是诊断心血管疾病的重要应用。最近,在可穿戴电子设备的新兴技术的推动下,大规模可穿戴式ECG传感器得到了发展,但是,这些可穿戴式ECG传感器在ECG信号上带来了更多的噪声污染源。在本文中,我们提出了一种新的基于离散曲率估计的低失真自适应Savitzky-Golay(LDASG​​)滤波方法,用于ECG去噪,其性能优于现有的ECG去噪技术。标准的Savitzky-Golay(SG)滤波器具有出色的数据平滑性能。然而,它缺乏对信号变化的适应性,因此经常引起诸如ECG的高变化信号的信号失真。在我们的方法中,离散曲率估计适用于表示信号变化,以减轻信号失真。通过根据每个数据样本的离散曲率自适应地设计适当的SG滤波器,该方法仍然保留了出色的数据平滑性的SG滤波器的内在优势,并进一步解决了以低信号失真消除高信号变化的挑战。在我们的实验中,我们将我们的方法与基于EMD小波的方法和非局部均值(NLM)去噪方法的噪声消除和信号失真降低性能进行了比较。特别是为了降低信号失真,我们的方法与EMD小波相比,MSE降低了33.33%,与NLM相比,降低了50%,与EMD小波相比,PRD降低了18.25%,与EMD小波相比降低了25.24% NLM。我们的方法在临床和消费电子产品的ECG去噪的广泛应用中显示出很高的潜力和可行性。

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