Xiang Kui, Luo Qiao, Chen Jing
School of Automation, Wuhan University of Technology, Wuhan 430070, China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2012 Aug;29(4):639-44.
Motion artifacts are a main interference source of ambulatory physiology signals. The interference in wearable detection systems is more serious because of using dry electrodes. On account of the instantaneity in motion artifacts and periodicity in physiological signal, we presented a new method based on periodic component analysis for motion artifact reduction. The single channel signal is transformed into multi-channel signal with multi resolution analysis, and then periodic component analysis can help us to separate the normal physiological signal from motion artifacts. A case study in electrocardiogram (ECG) demonstrates that periodic component analysis is better than the empirical mode decomposition and adaptive filtering methods. Periodic component analysis as a time domain method can discriminate the signal with frequency aliasing, and recover the ECG waveform feature corrupted. This method can be easily extended to other physiological signal processing.
运动伪影是动态生理信号的主要干扰源。由于使用干电极,可穿戴检测系统中的干扰更为严重。鉴于运动伪影的瞬时性和生理信号的周期性,我们提出了一种基于周期成分分析的减少运动伪影的新方法。通过多分辨率分析将单通道信号转换为多通道信号,然后周期成分分析可帮助我们从运动伪影中分离出正常生理信号。心电图(ECG)的案例研究表明,周期成分分析优于经验模态分解和自适应滤波方法。周期成分分析作为一种时域方法,可以区分存在频率混叠的信号,并恢复受损的心电图波形特征。该方法可以很容易地扩展到其他生理信号处理中。