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Motion Artifact Removal and Feature Extraction from PPG Signals Using Efficient Signal Processing Algorithms

机译:使用有效的信号处理算法从PPG信号中去除运动伪像和特征

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The performance of wearable Photoplethysmographic Biosensors can be highly influenced by the motion artifacts. This work proposes a performance enhancement algorithm which can remove the effect of motion artifacts caused by the voluntary movements during various physical activities of an individual. We have developed and implemented three motion artifact removal algorithms namely, ICA-Adaptive Filter Algorithm, Butterworth-ICA-Adaptive Filter Algorithm and Butterworth-Wavelet Transform Algorithm. These three algorithms were analyzed under four fingertip movements like vertical movement, horizontal movement, shivering, and applying pressure. Based on the analysis we found that the Butterworth-Wavelet Transform Algorithm is better in providing high Signal to Noise Ratio (SNR) without compromising any signal characteristics and the algorithm validation was done by extracting Heart Rate (HR) and Peripheral Oxygen Saturation (SpO2) values using Photoplethysmographic (PPG) signals obtained from available Biosensor. The results are found promising and suggest that the Butterworth-Wavelet Transform Algorithm provides motion artifact-free PPG signal for accurate feature extraction.
机译:可穿戴式光电容积描记器生物传感器的性能会受到运动伪影的高度影响。这项工作提出了一种性能增强算法,该算法可以消除在个人的各种身体活动期间由自愿运动引起的运动伪影的影响。我们已经开发并实现了三种运动伪影去除算法,分别是ICA自适应滤波算法,Butterworth-ICA自适应滤波算法和Butterworth-Wavelet变换算法。在四个指尖移动(例如垂直移动,水平移动,发抖和施加压力)下分析了这三种算法。基于分析,我们发现巴特沃斯小波变换算法在提供高信噪比(SNR)且不影响任何信号特性的情况下效果更好,并且算法验证是通过提取心率(HR)和周围氧饱和度(SpO)来完成的 2 )值使用从可用的Biosensor获得的光电容积描记(PPG)信号。发现结果很有希望,并表明巴特沃斯小波变换算法可提供无运动伪影的PPG信号,以进行准确的特征提取。

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