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A CAD system to analyse mammogram images using fully complex-valued relaxation neural network ensembled classifier

机译:使用完全复数值松弛神经网络​​集成的分类器分析乳房X线照片的CAD系统

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摘要

This paper presents a new improved classification technique using the Fully Complex-Valued Relaxation Neural Networks (FCRN) based ensemble technique for classifying mammogram images. The system is developed based on three stages of Breast cancer, namely Normal, Benign and Malignant, defined by the MIAS database. Features like Binary object Features, RST Invariant Features, Histogram Features, Texture Features and Spectral Features are extracted from the MIAS database. Extracted features are then given to the proposed FCRN-based ensemble classifier. FCRN networks are ensembled together for improving the classification rate. Receiver Operating Characteristic (ROC) analysis is used for evaluating the system. The results illustrate the superior classification performance of the ensembled FCRN. Performance comparison of various sets of training and testing vectors are provided for FCRN classifier. The resultant ensembled FCRN approximates the desired output more accurately with a lower computational effort.
机译:本文提出了一种新的改进的分类技术,它使用基于全复数值松弛神经网络​​(FCRN)的集成技术对乳房X线照片进行分类。该系统是根据MIAS数据库定义的乳腺癌的三个阶段开发的,即正常,良性和恶性。从MIAS数据库中提取二进制对象特征,RST不变特征,直方图特征,纹理特征和光谱特征等特征。然后将提取的特征提供给建议的基于FCRN的集成分类器。将FCRN网络集成在一起以提高分类率。接收器工作特性(ROC)分析用于评估系统。结果说明了集成FCRN的出色分类性能。为FCRN分类器提供了各种训练和测试向量集的性能比较。所得的组合FCRN以较低的计算量就能更准确地逼近所需的输出。

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