Efficient preprocessing filters and mass segmentation techniques for mammogram images

M. George, S. Sankar
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引用次数: 18

Abstract

Breast tumor is a champion among the most broadly perceived sort of development among women that creates from breast tissue. Still the correct reason for the breast disease stays obscure. Early discovery and determination is the best methodology to control the tumor movement. Mammography is the right now suggested imaging strategy for early assurance and determination of breast danger. A mammogram can distinguish unusual areas in the breast that resemble a malignancy. Mammogram pictures are observed to be hard to decipher so a CAD is turning into an undeniably essential device to help radiologist in the mammographic lesion interpretation. Preprocessing was considered as an essential stride in mammogram picture investigation. Exactness of preprocessing will decide the achievement of the rest of the procedure, for example, segmentation, classification and so forth. In this paper, mean, median, adaptive median, gaussian and wiener denoising filters are utilized to evacuate salt and pepper, speckle and gaussian noises from a mammogram picture and these filters were looked at in light of the parameters, for example, PSNR, MSE and SNR to figure out which filter is better to remove these noises in mammogram pictures. The segmentation is a process in which changing the representation of an image such that it is easier to analyse. This paper compares various mass segmentation techniques used in mammogram images.
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乳房x光图像的高效预处理滤波器和质量分割技术
乳房肿瘤是女性中最广为人知的一种由乳房组织产生的疾病。乳腺疾病的正确原因仍然不清楚。早期发现和诊断是控制肿瘤运动的最佳方法。乳房x线照相术是目前建议的早期确定和确定乳房危险的成像策略。乳房x光检查可以区分乳腺中类似恶性肿瘤的异常区域。人们观察到乳房x光照片很难辨认,因此CAD正在成为帮助放射科医生解释乳房x光照片病变的不可否认的重要设备。预处理被认为是乳房x光图像调查的重要一步。预处理的准确性将决定后续程序的效果,如分割、分类等。本文利用均值、中值、自适应中值、高斯和维纳去噪滤波器从乳房x线照片中去除盐和胡椒、斑点和高斯噪声,并根据PSNR、MSE和SNR等参数对这些滤波器进行研究,找出哪种滤波器能更好地去除乳房x线照片中的这些噪声。分割是一个过程,其中改变图像的表示,使其更容易分析。本文比较了乳房x光图像中使用的各种质量分割技术。
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