Texture image segmentation method based on wavelet packet transform and FCM clustring
-
摘要: 提出了一种新的图像特征提取中选取最优小波分解树的方法.塔式小波分解对信号解不够全面,而小波包全分解又引入庞大的计算量,因此小波分解最优树的选取尤为重要.结合模糊c均值(FCM,Fuzzy C-Mean)聚类,提出了一种能同时进行小波自适应分解和纹理特征分类的纹理图像分割方法,该方法将无监督聚类中的聚类有效性参数引入到自适应小波分解的判决中,能根据无监督聚类分割的需要,自适应地选取小波包分解的树形结构和分解层数.相对于小波包全分解,节省了大量的运算,并能取得良好的分割效果.Abstract: A new method of optimal tree structure selection of wavelet transformation for image segmentation was presented. The standard pyramid-structure wavelet transform founded on the same recursive technique: only the low-pass outputs were used. It could not adjust the decomposition to accurate and efficient texture description. Although the wavelet packet transform provided a much more detailed analysis of the frequency content of a texture, it is often the case that areas which contain little or no frequency information are recursively decomposed. So the selection of optimal wavelet basis for texture characterization is very important. By introducing the validity measure for fuzzy clustering to the decision of wavelet decomposition structure, the presented algorithm simultaneously performs the adaptive wavelet decomposition and the texture feature classification, moreover it adaptively chooses the wavelet decomposition structure and depth. Compared with the wavelet packet decomposition, the algorithm reduces the computational burden, while obtains satisfactory segmentation results.
-
Key words:
- image segmentation /
- wavelet transform /
- fuzzy c-means clustering /
- optimal wavelet basis
-
[1] Stephane G, Mallat A. Theory for multiresolution signal decomposition: the wavelet representation [J]. IEEE Trans on Pattern Analysis and Machine Intelligence, 1989,6: 674 - 693 [2] Brady K, Jermyn I H, Zerubia J. Texture analysis: anadaptive probabilistic approach Proc IEEE ICIP. Barcelona, Spain:IEEE, 2003: 1045-1048 [3] Herley Cormac, Xiong Zixiang, Ramchandran Kannan, et al. Joint space frequency segmentation using balanced wavelet packet trees for least-cost image representation[J]. IEEE Trans on Image Processing, 1997,6(9):1213-1229 [4] Soo Chang Kim. Tae jin kang texture classification and segmentation using incomplete tree structured wavelet packet frame and gaussian mixture model IEEE International Workshop on Imaging Systems and Techniques. Niagara Falls:IEEE,2005,5:46-51 [5] Rahul Shukla, Pier Luigi Dragotti, Minh N Do,et al. Rate-distortion optimized tree-structured compression algorithms for piecewise polynomial images[J]. IEEE Trans on Image Processing, 2005,3:343-359 [6] Unser M. Texture classification and segmentation using wavelet frames[J]. IEEE Transactions On Signal Processing,1995,4 (11):1549-1560 [7] 吴高洪,章毓晋,林行刚.利用小波变换和特征加权进行纹理分割[J].中国图象图形学报,2001,4:334-337 Wu Gaohong, Zhang Yujin, Lin Xinggang. Texture segmentation with wavelet transform and feature weighting[J].Journal of Image and Graphics, 2001,4:334-337(in Chinese) [8] Xie X L, Beni G. A validity measure for fuzzy clustering[J]. IEEE Trans on Pattern Analysis and Machine Intelligence,1991, 13: 841-847
点击查看大图
计量
- 文章访问数: 3340
- HTML全文浏览量: 58
- PDF下载量: 1353
- 被引次数: 0