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Analysis of mammogram images based on texture features of curvelet Sub-bands

机译:基于curvelet子带纹理特征的乳腺X线照片图像分析

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Image texture analysis plays an important role in object detection and recognition in image processing. The texture analysis can be used for early detection of breast cancer by classifying the mammogram images into normal and abnormal classes. This study investigates breast cancer detection using texture features obtained from the grey level cooccurrence matrices (GLCM) of curvelet sub-band levels combined with texture feature obtained from the image itself. The GLCM were constructed for each sub-band of three curvelet decomposition levels. The obtained feature vector presented to the classifier to differentiate between normal and abnormal tissues. The proposed method is applied over 305 region of interest (ROI) cropped from MIAS dataset. The simple logistic classifier achieved 86.66% classification accuracy rate with sensitivity 76.53% and specificity 91.3%.
机译:图像纹理分析在图像处理中的对象检测和识别中起着重要作用。通过将乳房X线照片图像分为正常和异常类别,纹理分析可用于乳腺癌的早期检测。本研究使用从曲波子带水平的灰度共生矩阵(GLCM)获得的纹理特征与从图像本身获得的纹理特征相结合的方法来研究乳腺癌的检测。为三个curvelet分解级别的每个子带构造了GLCM。所获得的特征向量呈现给分类器,以区分正常组织和异常组织。所提出的方法应用于从MIAS数据集中裁剪的305个感兴趣区域(ROI)。简单逻辑分类器的分类准确率达到86.66%,灵敏度为76.53%,特异性为91.3%。

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