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Mass Screening and Feature Reserved Compression in A Computer-aided System for Mammograms

机译:乳房X线照片计算机辅助系统中的质量筛选和特性压缩

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This paper presents a computer-aided prescreening and storage system, which automatically prescreens the mass regions from mammograms and based on the results, performs a progressive compression in the storage. This is performed in two subsystems called mass screening subsystem and mass feature reserved compression subsystem. In the first subsystem, breast region is firstly extracted from images, followed by Gradient Enhancement and Median Filtering. Then, 19 texture features are calculated from 32×32 pixel blocks on the extracted breast region, and suboptimal feature subset is extracted. Then SVM classifier is employed for classifying the regions into mass, breast without masses and background. In the second subsystem, Vector Quantization GHNN (Grey-based Competitive Hopfield neural network) is applied on the three regions with different compression rates according their importance factors so as to reserve important features and simultaneously reduce the size of mammograms for storage efficiency.
机译:本文介绍了一种计算机辅助的预筛选和存储系统,其自动从乳房X光检查中置换质量区域,并基于结果,在存储器中执行逐行压缩。这是在称为质量筛选子系统和质量特征保留压缩子系统的两个子系统中进行的。在第一子系统中,首先从图像中提取乳房区域,然后是梯度增强和中值滤波。然后,从提取的乳房区域的32×32像素块计算19个纹理特征,提取次优特征子集。然后,SVM分类器用于将区域分类为质量,乳房没有质量和背景。在第二子系统中,向量量化GHNN(基于灰色的竞争Hopfield神经网络)应用于其重要性因素的三个区域,以便储备重要特征,同时降低乳房X线图的尺寸以实现存储效率。

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