基于自适应资源分配网络分类器的乳腺x线图像计算机辅助检测与分类

S. Shanthi, V. Bhaskaran
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引用次数: 6

摘要

本研究提出一种用于乳房x光影像中乳癌自动侦测与分类的电脑辅助系统。首先利用直觉模糊c均值聚类技术对可疑区域或感兴趣区域进行识别和提取;然后对提取的感兴趣区域进行多层离散小波变换。应用离散小波变换,从图像的每个感兴趣区域提取直方图特征、灰度并发小波特征和小波能量特征。在分类之前,对提取的特征进行主成分分析,降低特征维数。最后,将特征库提交给自适应资源分配网络分类器进行分类。该系统通过乳房x线图像分析学会数据库中的295张乳房x线照片进行验证。结果表明,该算法具有较好的效果。
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Computer aided detection and classification of mammogram using self-adaptive resource allocation network classifier
This study presents a computer aided system for automatic detection and classification of breast cancer in mammogram images. First the suspicious region or the Region of Interest is identified and extracted using Intuitionistic Fuzzy C-Means Clustering technique. Next multilevel Discrete Wavelet Transformation is applied to the extracted Region of Interest. After applying Discrete Wavelet Transformation, histogram features, Gray Level Concurrence wavelet features, and wavelet energy features are extracted from each Region of Interest of the image. Before classification, Principal Component Analysis is applied on the extracted features to reduce the feature dimension. Finally, the feature database is submitted to self-adaptive resource allocation network classifier for classification. The proposed system is verified with 295 mammograms in the Mammographic Image Analysis Society Database. The result shows that the proposed algorithm produces better results.
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