基于金字塔结构小波变换的医学图像纹理特征提取

Shurong Liu, Kun Han, Zhibin Song, Misheng Li
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引用次数: 4

摘要

为了提取医学图像的纹理特征,本文采用了金字塔结构小波(PWT)。从医学图像数据库中选取一组胸部CT灰度图像作为测试集。利用db6、db2和Haar三种不同的小波基分别进行PWT提取图像的纹理特征。采用以边界为对称中心的对称圆扩展方法,克服了重构信号附近存在的数据增加和较大误差的问题。实验结果表明,胸部CT图像的纹理特征主要集中在低频部分。然而,LH、HL和HH子带所含能量不到总能量的7%。使用haar小波基的PWT比使用db2和db6小波基提取更多的信息。对于医学图像的纹理分析,采用haar小波基的PWT算法可以提高各子带的特征提取性能。
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Texture characteristic extraction of medical images based on pyramid structure wavelet transform
In order to extract image texture features of medical images, pyramid structure wavelet (PWT) is used in this paper. A group of gray-scale images of chest CT from medical image database are selected as test set. The PWT using three different wavelets bases db6, db2 and Haar are carried out to extract texture feature of each image respectively. A method called symmetric circular extension which takes the boundary as symmetric center are utilized to overcome data increasing and large errors existed nearby reconstructed signal. Empirical results show that the texture feature of chest CT images is mainly concentrated in the low frequency part. However, LH, HL and HH sub-bands contain only less than 7% of the total energy. The PWT using haar wavelet basis extracts more information than it using db2 and db6 wavelet basis. For texture analysis of medical images, the PWT algorithm using haar wavelet base can improve the performance of feature extraction of each sub-band.
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