Computer aided mass segmentation in mammogram images using Grey wolf Optimized Region growing technique

Ashi Ashok, Devi Vijayan, L. R
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引用次数: 1

Abstract

One of the dangerous threats, that affect women all around the globe is breast cancer, leading to early mortality in women. According to researchers the survival rate of the breast cancer affected person can be improved by a greater amount by its early detection. Hence, there is need for development of an automated system, which can act as an aid for supporting the radiologists in making proper diagnostic decision. The proposed work involves detection of the breast masses by making use of an optimized region growing method, in which the optimal seed point selection and optimal threshold generation was achieved using Grey Wolf Optimization (GWO). In the proposed work the extraction of both global and local features are being considered. The global features considered includes shape features, Grey Level Co-occurrence Matrix (GLCM) and Grey Level Run Length Matrix (GLRLM) for extracting texture feature and local texture feature is extracted using Local Binary Pattern (LBP) and Scale invariant feature transform (SIFT). The fusion of the local and global features were being fed to Support Vector Machine (SVM) classifier, which differentiates the masses as either benign or malignant in nature. The proposed methodology achieved a highest accuracy of 96% by the fusion of global texture feature GLCM and LBP.
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利用灰狼优化区域生长技术对乳房x线图像进行计算机辅助质量分割
影响全球女性的危险威胁之一是乳腺癌,导致女性过早死亡。根据研究人员的说法,早期发现乳腺癌患者的存活率可以大大提高。因此,有必要开发一种自动化系统,它可以作为辅助,支持放射科医生做出正确的诊断决定。提出了一种基于优化区域生长的乳腺肿块检测方法,该方法利用灰狼优化算法实现了最优种子点选择和最优阈值生成。在建议的工作中,正在考虑提取全局和局部特征。全局特征包括形状特征、灰度共生矩阵(GLCM)和灰度运行长度矩阵(GLRLM)提取纹理特征,局部纹理特征提取采用局部二值模式(LBP)和尺度不变特征变换(SIFT)。将局部特征和全局特征融合到支持向量机(SVM)分类器中,对肿块进行良性和恶性的区分。该方法通过融合全局纹理特征GLCM和LBP,达到了96%的最高准确率。
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