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在对心率变异性(HRV)信号及类似的信号进行分析时往往希望把其中具有分形性质的1/f成份和非1/f成份分解开分别处理。然而,由于1/f成份和非1/f成份在频域上相互重叠,不容易简单地用频域滤波的方法来分解。因此有人根据1/f成份的特点提出了所谓粗粒化谱分析的频域分解方法。由于该方法存在一些缺点,本文根据1/f成份的特点提出了基于小波变换的HRV信号的时域分解算法。对仿真的HRV信号和实际HRV信号的分解的结果证实本文提出的方法优于粗粒化谱分析法。
In the analysis of heart rate variability (HRV) signals and the like, it is often desirable to separate the 1/f component and the non 1/f component having the fractal nature therein. However, since the 1/f component and the non 1/f component overlap each other in the frequency domain, it is not easy to decompose using the frequency domain filtering method. Therefore, according to the characteristics of the 1/f component, a frequency domain decomposition method called coarse-grained spectral analysis has been proposed. Due to the disadvantages of this method, this paper proposes a time-domain decomposition algorithm of HRV signal based on wavelet transform according to the characteristics of 1/f component. The results of the decomposition of the simulated HRV signal and the actual HRV signal confirm that the proposed method is superior to the coarse grained spectral analysis method.