Feature Extraction of Kidney Ultrasound Images Based on Intensity Histogram and Gray Level Co-occurrence Matrix

W. M. Hafizah, E. Supriyanto, J. Yunus
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引用次数: 52

Abstract

This study proposes an approach of feature extraction of kidney ultrasound images based on five intensity histogram features and nineteen gray level co-occurrence matrix (GLCM) features. Kidney ultrasound images were divided into four different groups; normal (NR), bacterial infection (BI), cystic disease (CD) and kidney stones (KS). Before feature extraction, the images were initially preprocessed for preserving pixels of interest prior to feature extraction. Preprocessing techniques including region of interest cropping, contour detection, image rotation and background removal, have been applied. Test result shows that kurtosis, mean, skewness, cluster shades and cluster prominence dominates over other parameters. After normalization, KS group has highest value of kurtosis (1.000) and lowest value of cluster shades (0.238) and mean (0.649) while NR group has highest value of mean (1.000), skewness (1.000), cluster shades (1.000) and cluster prominence (1.000). CD group has the lowest value of skewness (0.625) and BI has the lowest value of kurtosis (0.542). This shows that these features can be used to classify kidney ultrasound images into different groups for creating database of kidney ultrasound images with different pathologies.
基于强度直方图和灰度共生矩阵的肾脏超声图像特征提取
本研究提出了一种基于5个强度直方图特征和19个灰度共生矩阵(GLCM)特征的肾脏超声图像特征提取方法。肾脏超声图像分为四组;正常(NR)、细菌感染(BI)、囊性疾病(CD)和肾结石(KS)。在特征提取之前,首先对图像进行预处理,以在特征提取之前保留感兴趣的像素。预处理技术包括兴趣区域裁剪、轮廓检测、图像旋转和背景去除。测试结果表明,峰度、均值、偏度、聚类阴影和聚类显著性优于其他参数。归一化后,KS组峰度值最高(1.000),聚类阴影值最低(0.238),均值最低(0.649),NR组均值、偏度、聚类阴影值最高(1.000),聚类突出值最高(1.000)。CD组偏度最小(0.625),BI组峰度最小(0.542)。这表明这些特征可以用来将肾脏超声图像分类成不同的组,从而创建不同病理的肾脏超声图像数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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