Breast Tumor Detection Via Fuzzy Morphological Operations

Mohammed Y. Kamil, A. Salih
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引用次数: 1

Abstract

Breast cancer is one of most dangerous diseases and more common in women. The early detection of cancer is one of the most key factors for possible cure. There are numerous methods of diagnosis amongst which: clinical examination, sonar and mammography, which is the best and more effective in detecting breast cancer. Detection of breast tumors is difficult because of the weak illumination in the image and the overlap between regions. Segmentation is one the crucial steps in locating the tumors, which is an important method of diagnosis of the computer. In this study, segmentation techniques are proposed based on; classic morphology and fuzzy morphology, and a comparison between them. The proposed methods were tested using the database of mini -MIAS, which contains 322 images. After the comparison the statistical results, it shows, the detection of tumor boundary with fuzzy morphology give the higher accuracy than the results in classic morphology. The accuracy is 60.69%, 58.61% respectively due to the high flexibility of foggy logic in dealing with the low lighting in the medical images.
基于模糊形态学的乳腺肿瘤检测
乳腺癌是最危险的疾病之一,在女性中更为常见。癌症的早期发现是可能治愈的最关键因素之一。诊断方法有很多,其中临床检查、声纳和乳房x光检查是检测乳腺癌最好和最有效的方法。由于图像光照较弱以及区域间的重叠,使得乳腺肿瘤的检测变得困难。分割是肿瘤定位的关键步骤之一,是计算机诊断的重要方法。本研究提出了基于;经典形态学与模糊形态学的比较。利用包含322张图像的mini -MIAS数据库对所提出的方法进行了测试。统计结果对比表明,模糊形态学对肿瘤边界的检测准确率高于经典形态学。由于雾逻辑在处理医学图像的低光照条件时具有很高的灵活性,准确率分别为60.69%和58.61%。
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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