利用双roi方法提高乳房x线图像分割效率

Venkata Satya Vivek Tammineedi, C. Raju, D. GirishKumar, Venkateswarlu Yalla
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摘要

乳房x光片分割利用多区域的兴趣是一个突出的在医学图像分析中最新兴的探索领域。研究的步骤分为两类:1)乳房x线图像的分割和2)乳房x线图像的纹理特征提取。为了克服这些困难,本文提出了一种引人注目的技术,该技术包括三个阶段。在主要安排中,从INbreast数据库中选择乳房x光图像,并利用拉普拉斯滤波对其进行改进。此时,利用改进的自适应正则化核模糊C均值(M-ARKFCM)对预处理后的乳房x线图像进行分割。分割后,连接统计纹理FE,用于识别乳房x线图像中癌区和非癌区的模式。实验结果表明,与现有的分割方法相比,该方法提高了基于统计参数的分割效率。
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Improvement of Segmentation Efficiency in Mammogram Images Using Dual-ROI Method
Mammogram segmentation utilizing multi-region of intrigue is a standout amongst the most rising exploration territory in the medical image analysis. The steps engaged with the research are grouped into two kinds: 1) segmentation of mammogram images and 2) extraction of texture features from mammogram images. To overcome these difficulties, a compelling technique is proposed in this paper that comprises of three phases. In the principal arrangement, mammogram images from INbreast database are selected and improved utilizing Laplacian filtering. At that point, the pre-processed mammogram images are utilized for segmentation utilizing modified adaptively regularized kernel-based fuzzy C means (M-ARKFCM). After segmentation, statistical texture FE is connected for recognizing the patterns of cancer and non-cancer regions in mammogram images. Finally, the experimental outcome demonstrated that the proposed approach enhanced the segmentation efficiency by methods of statistical parameters contrasted with the existing operating procedures.
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