提出的人工神经网络(ANN)算法与其他技术的比较分析

D. Chatha, Alankrita Aggarwal, Rajender Kumar
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引用次数: 1

摘要

由于癌症,妇女死亡率正在逐步上升。一般来说,45岁左右的妇女易患这种疾病。早期发现是患者生存的希望,否则可能会发展到无法恢复的阶段。目前,有许多技术可用于诊断这种疾病,其中乳房x光检查是检测早期癌症阶段最值得信赖的方法。由于低对比度和不均匀的背景,这些乳房x线照片的分析很困难。乳房x光图像经过扫描和数字化处理,进一步降低感兴趣区域和背景之间的对比度。噪音、腺体和肌肉的存在导致背景对比度的变化。疑似肿瘤区域的边界模糊、不合理。本文的目的是开发一种鲁棒的边缘检测技术,使其在乳房x线图像上的检测效果达到最佳。给出了该技术在MIAS数据库中不同乳房x线图像上的输出结果,并与现有技术在定性和定量参数方面进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Proposed Artificial Neural Network (ANN) Algorithm With Other Techniques
The mortality rate among women is increasing progressively due to cancer. Generally, women around 45 years old are vulnerable from this disease. Early detection is hope for patients to survive otherwise it may reach to unrecoverable stage. Currently, there are numerous techniques available for diagnosis of such a disease out of which mammography is the most trustworthy method for detecting early cancer stage. The analysis of these mammogram images are difficult to analyze due to low contrast and nonuniform background. The mammogram images are scanned and digitized for processing that further reduces the contrast between Region of Interest and background. Presence of noise, glands and muscles leads to background contrast variations. Boundaries of suspected tumor area are fuzzy & improper. Aim of paper is to develop robust edge detection technique which works optimally on mammogram images to segment tumor area. Output results of proposed technique on different mammogram images of MIAS database are presented and compared with existing techniques in terms of both Qualitative & Quantitative parameters.
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