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基于方向-频率分解的旋转不变性纹理分类
引用本文:韩光,赵春霞.基于方向-频率分解的旋转不变性纹理分类[J].光子学报,2010,39(2):352-356.
作者姓名:韩光  赵春霞
作者单位:南京理工大学,计算机科学与技术学院,南京,210094
基金项目:国家自然科学基金(60705020);;国家高技术研究发展计划(2006AA04Z238)资助
摘    要:提出了一种用于纹理分类的旋转不变性特征提取的新算法.该算法是将一定大小的图像进行二维傅里叶变换;其次在变换后的图像中央选择一个圆盘区域,并在方向0°,180°]内进行等间隔角度频率抽样,实现方向分解,使用一组复Morlet小波对每个方向上的映射切片进行小波变换,从而实现多通道频率分解;在各个频率通道中计算均值和方差作为特征,并利用线性回归模型计算频率通道之间的关系特征;将特征沿方向进行一维傅里叶变换并取其幅值,从而得到旋转不变性特征.实验结果表明所提取的特征具有较好的旋转不变性,与其它算法相比具有更好的分类性能,并且对无旋转纹理分类也能产生较好的分类结果.

关 键 词:脊波变换  复Morlet小波  方向-频率分解  旋转不变性  纹理特征  纹理分类
收稿时间:2008-11-21
修稿时间:2009-01-11

Rotation Invariant Texture Classification Based on Orientation-frequency Decomposition
HAN Guang,ZHAO Chun-xia.Rotation Invariant Texture Classification Based on Orientation-frequency Decomposition[J].Acta Photonica Sinica,2010,39(2):352-356.
Authors:HAN Guang  ZHAO Chun-xia
Institution:College of Computer Science and Technology;Nanjing University of Science and Technology;Nanjing 210094;China
Abstract:A new rotation invariant feature extraction method for texture classification is proposed.2-D Fourier transform is applied on a texture image,a disk area within the central region of image is chosen,and frequency is sampled on the selected area with equal interval angles within the orientation0°,180°],so orientation decomposition is realized.A set of complex Morlet wavelet are applied on projection slice of each direction to decompose each projection into several frequency channels,the average and variance extracted are computed in each frequency channel,and then linear regression model is employed to computer realationship feature between frequency channels.1-D DFT is applied to features and the amplitudes of Fourier coefficient are selected as features,then the extracted features are rotation invariant.Experimental results show that features extracted have a good rotation invariant and better classification performance with some existing methods,and better classification results can also be achieved for non-rotation texture classification.
Keywords:Ridgelet transform  Complex Morlet wavelets  Orientation-frequency decomposition  Rotation invariance  Texture feature  Texture classification  
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