Bahaz Mohamed, Benzid Redha
Laboratoire d'Automatique Avancée et d'Analyse des Systèmes (LAAAS), Electronics Department, University of Batna 2, Batna, Algeria.
Australas Phys Eng Sci Med. 2018 Mar;41(1):143-160. doi: 10.1007/s13246-018-0623-1. Epub 2018 Feb 5.
Electrocardiogram (ECG) signals are often contaminated with artefacts and noises which can lead to incorrect diagnosis when they are visually inspected by cardiologists. In this paper, the well-known discrete Fourier series (DFS) is re-explored and an efficient DFS-based method is proposed to reduce contribution of both baseline wander (BW) and powerline interference (PLI) noises in ECG records. In the first step, the determination of the exact number of low frequency harmonics contributing in BW is achieved. Next, the baseline drift is estimated by the sum of all associated Fourier sinusoids components. Then, the baseline shift is discarded efficiently by a subtraction of its approximated version from the original biased ECG signal. Concerning the PLI, the subtraction of the contributing harmonics calculated in the same manner reduces efficiently such type of noise. In addition of visual quality results, the proposed algorithm shows superior performance in terms of higher signal-to-noise ratio and smaller mean square error when faced to the DCT-based algorithm.
心电图(ECG)信号常常受到伪迹和噪声的污染,心脏病专家在对其进行目视检查时可能会导致误诊。本文重新探讨了著名的离散傅里叶级数(DFS),并提出了一种基于DFS的有效方法,以减少心电图记录中基线漂移(BW)和电力线干扰(PLI)噪声的影响。第一步,确定对BW有贡献的低频谐波的确切数量。接下来,通过所有相关傅里叶正弦波分量的总和来估计基线漂移。然后,通过从原始有偏差的ECG信号中减去其近似版本,有效地消除基线偏移。对于PLI,以相同方式计算的贡献谐波的减法有效地降低了此类噪声。除了视觉质量结果外,与基于离散余弦变换(DCT)的算法相比,该算法在更高的信噪比和更小的均方误差方面表现出卓越的性能。