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Breast Abnormality Detection IncorporatingBreast Density Information Based on Independent Components Analysis

机译:基于独立分量分析的乳房异常检测掺入Brement密度信息

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This paper introduces an approach to breast abnormality classification which incorporates breast density information. Features are extracted by a novel technique based on Independent Component Analysis, which decomposes the selected images into sets of independent source regions and corresponding basis functions (weights). The coefficients which result from the source regions are used in turn to describe normality and abnormality. The method has been tested on the MIAS database and has high sensitivity.
机译:本文介绍了乳房异常分类的方法,该分类包括乳房密度信息。基于独立分量分析的新技术提取特征,该技术将所选择的图像分解成独立源区集和相应的基函数(权重)。由源区产生的系数反过来用于描述正常性和异常。该方法已经在MIS数据库上进行了测试,灵敏度高。

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