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A novel min-max feature value based neural architecture and learning algorithm for classification of microcalcifications

机译:一种基于最小-最大特征值的神经结构和微钙化分类的学习算法

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The paper proposes a novel min-max feature value based neural architecture and learning algorithm for classification of microcalcification patterns in digital mammograms. The neural architecture has a single hidden layer and it has a fixed number of hidden units and outputs. One class is represented by three hidden units and an output. The suspicious areas represented by chain code, are extracted from digital mammograms. The feature values are extracted for benign and malignant microcalcifications. A set of min, average and max values for every input feature is defined and assigned to the weights between input and hidden layer. The weights of the output layer are calculated using least squares methods or assigned in such a way that it maximizes the output value for only one class. Many experiments were conducted on a benchmark database of digital mammograms and comparative results are included in this paper.
机译:本文提出了一种基于最小-最大特征值的神经体系结构和学习算法,用于对数字乳房X线照片中的微钙化模式进行分类。神经体系结构具有单个隐藏层,并且具有固定数量的隐藏单元和输出。一类由三个隐藏的单元和一个输出表示。从数字乳房X线照片中提取以链码表示的可疑区域。为良性和恶性微钙化提取特征值。定义每个输入要素的一组最小值,平均值和最大值,并将其分配给输入层和隐藏层之间的权重。输出层的权重是使用最小二乘法计算的,或者以仅使一个类最大化输出值的方式分配。在数字化乳腺X射线照片的基准数据库上进行了许多实验,并提供了比较结果。

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