Optimal wavelet packet decomposition for rectal pressure signal feature extraction

E. Jiang, P. Zan, Suqin Zhang, Xiaojin Zhu, Y. Shao
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引用次数: 3

Abstract

The method of optimal wavelet packet decomposition is proposed for rectal pressure signal feature extraction. By using wavelet packet algorithm, the mean wavelet coefficients and its corresponding energy component with high separability are selected as the feature vector according to the maximum separation degree of Fisher index, and the optimal features vector have specific sub-band wavelet packet coefficients and energy with higher separability. By comparison of the classification result and the operation time of optimized and non-optimized features vectors, the experimental results give the evidence that the proposed method is effective.
基于小波包分解的直肠压力信号特征提取
提出了基于最优小波包分解的直肠压力信号特征提取方法。采用小波包算法,根据Fisher指数的最大分离度,选取小波系数均值及其对应的高可分性能量分量作为特征向量,得到具有特定子带小波包系数和高可分性能量的最优特征向量。通过对优化和非优化特征向量的分类结果和操作时间的比较,实验结果证明了该方法的有效性。
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