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Texture Feature Analysis for Different Resolution Level of Kidney Ultrasound Images

机译:肾超声图像不同分辨率水平的纹理特征分析

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Image feature extraction is a technique to identify the characteristic of the image. The objective of this work is to discover the texture features that best describe a tissue characteristic of a healthy kidney from ultrasound (US) image. Three ultrasound machines that have different specifications are used in order to get a different quality (different resolution) of the image. Initially, the acquired images are pre-processed to de-noise the speckle to ensure the image preserve the pixels in a region of interest (ROI) for further extraction. Gaussian Low-pass Filter is chosen as the filtering method in this work. 150 of enhanced images then are segmented by creating a foreground and background of image where the mask is created to eliminate some unwanted intensity values. Statistical based texture features method is used namely Intensity Histogram (IH), Gray-Level Co-Occurance Matrix (GLCM) and Gray-level run-length matrix (GLRLM) This method is depends on the spatial distribution of intensity values or gray levels in the kidney region. By using One-Way ANOVA in SPSS, the result indicated that three features (Contrast, Difference Variance and Inverse Difference Moment Normalized) from GLCM are not statistically significant; this concludes that these three features describe a healthy kidney characteristics regardless of the ultrasound image quality.
机译:图像特征提取是一种识别图像特性的技术。这项工作的目标是发现最能描述来自超声(US)图像的健康肾脏的组织特征的纹理特征。使用具有不同规格的三种超声波机器以获得不同的图像的不同质量(不同分辨率)。最初,预处理的图像被预处理以解除斑点以确保图像在感兴趣区域(ROI)中保留像素以进一步提取。选择高斯低通滤波器作为本工作中的过滤方法。然后通过创建创建掩模以消除一些不需要的强度值的掩模来分割增强图像的150个增强图像。基于统计的纹理特征方法使用即强度直方图(IH),灰度级共用矩阵(GLCM)和灰度运行长度矩阵(GLRLM)该方法取决于强度值或灰度级的空间分布肾结构。通过在SPSS中使用单向ANOVA,结果表明,来自GLCM的三个特征(对比度,差异和逆差相归一动化)没有统计学意义;这三种特征的结论是,无论超声图像质量如何,这三个特征描述了健康的肾特征。

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