一种新的PolSAR图像分割集成聚类方法

G. Akbarizadeh, Masoumeh Rahmani
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引用次数: 21

摘要

本文将光谱聚类与Gabor特征聚类相结合,提高了分割效果。光谱聚类将图像划分为不重叠的组,使组内相似性尽可能高,组间相似性尽可能低。该方法包括解决归一化相似矩阵的特征值问题,大小为n × n,其中n为像素数。另一方面,采用Gabor滤波器进行纹理特征提取。利用Gabor滤波器对不同方向的纹理边缘能量形成图像每个像素的纹理特征向量。对输入图像的所有像素的纹理特征向量进行K-means聚类。最后,为了整合光谱聚类和Gabor特征聚类的结果,采用聚类集成方法对PolSAR图像进行分割。实验结果表明了该方法对PolSAR图像分割的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new ensemble clustering method for PolSAR image segmentation
In this paper, an effort is made to integrate spectral clustering and Gabor feature clustering, leading to improved segmentation results. The spectral clustering divides an image into nonoverlapped groups such that the intragroup similarity is high and the intergroup similarity is low as much as possible. This method includes solving the eigenvalue problem for the normalized similarity matrix, of size n × n, where n is the number of pixels. On the other hand, Gabor filter is used for texture feature extraction. A texture feature vector for each pixel of the image is formed corresponding to the texture edge energy at different directions with Gabor filter. The K-means clustering is applied on the texture feature vectors of all pixel of the input image. Finally, to integrate the results of spectral clustering and Gabor feature clustering, a cluster ensemble approach is applied and PolSAR image segmentation is performed. The experimental results indicate the effect of proposed method on PolSAR image segmentation.
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