基于曲线和GLCM特征的超声图像光谱聚类分割算法

T. Yun, H. Shu
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引用次数: 5

摘要

针对超声图像病理区域分割问题,提出了一种基于曲线特征和GLCM特征的超声图像光谱聚类分割方法。首先将超声图像细分为连续的小区域,每个小区域利用曲线变换和GLCM方法得到一系列的特征向量,包括角度二阶矩、对比度、相关、熵、方差、均值、亏缺矩等;其次,选取一组采样像素,简化数据空间,降低光谱聚类算法的数据维数;为了降低谱聚类算法的复杂度,设计了小样本提取方法;最后,以光谱聚类结果的先验分类为指导,利用KNN方法对剩余图像数据样本进行分类,完成分割。实验结果表明,该方法对超声图像中病理区域的分割具有较高的准确性和有效性。
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Ultrasound image segmentation by spectral clustering algorithm based on the curvelet and GLCM features
This paper address the issue of how to segmentation ultrasound image pathological region and propose a novel ultrasound image segmentation method by spectral clustering algorithm based on the curvelet and GLCM features. Firstly ultrasound image are subdivided into continuous small regions and each sub-region using curvelet transform and GLCM approach to get a series of feature vectors, including such as angle second-order moments, contrast, correlation, entropy, variance, mean, and the deficit moments etc; Secondly, a set of sampling pixels are selected to simplified data space and reduces the data dimension of spectral clustering algorithm. The small sample extraction method was designed to reduce the complexity of spectral clustering algorithm; Finally, priori classification of spectral clustering result as a guide, the remaining image data samples are classified using KNN method to complete the segmentation. Experimental results show that our method for pathological areas in the ultrasound image segmentation is highly accurate and effective.
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