Applied Improved Canny Edge Detection for Diagnosis Medical Images of Human Brain Tumors

Sarab M. Taher, Mustafa Ghanim, Chen Soong Der
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Abstract

Medical image processing has become one of the crucial elements of the diagnostic process because of the increased usage of medical imaging recently, and clinicians' dependence on such computer-processed medical images in diagnosing patients. As the traditional Canny edge detection algorithm is sensitive to noise, it is easy to lose weak edge information when filtering out the noise, and its fixed parameters show poor adaptability. The suggested algorithm introduced the concept of image block intensity operator to replace image gradient. In addition, the computing speed of the suggested algorithm is relatively fast because it works block by block rather than pixel by pixel. Two adaptive threshold selection methods are presented, one based on the median accumulative histogram of image gradient magnitude and the other on the standard deviation for both types of image pixels (one with less edge information and the other with rich edge information). The proposed algorithm can be dividing into four stages: Input the medical digital image, convert the color medical image to gray-scale, applied improved canny edge detection, then calculate the MSE & PSNR Measures, in addition conduct a visual questionnaire by oncologists to find out which method that made the enhancement of the medical image clearer.
应用改进的 Canny 边缘检测诊断人类脑肿瘤医学影像
近年来,医学影像的应用越来越广泛,临床医生在诊断病人时对计算机处理的医学影像的依赖性也越来越强,因此医学影像处理已成为诊断过程中的关键要素之一。由于传统的 Canny 边缘检测算法对噪声比较敏感,在滤除噪声时容易丢失较弱的边缘信息,而且其固定参数的适应性较差。建议的算法引入了图像块强度算子的概念来替代图像梯度。此外,建议算法的运算速度相对较快,因为它是逐块运算,而不是逐像素运算。该算法提出了两种自适应阈值选择方法,一种基于图像梯度大小累积直方图的中位数,另一种基于两种图像像素(一种边缘信息较少,另一种边缘信息丰富)的标准偏差。所提出的算法可分为四个阶段:输入医学数字图像,将彩色医学图像转换为灰度图像,应用改进的坎尼边缘检测,然后计算 MSE 和 PSNR 测量值,此外,由肿瘤学家进行视觉问卷调查,以找出哪种方法能使医学图像的增强效果更清晰。
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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