Enhanced Hopfield Neural Network with Edge Preserving (EHNN-EP) based severity diagnosis of Ductal Carcinoma in Situ (DCIS)

H. Mercy, P. Thangavel
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Abstract

Computer aided mammogram image cancer segmentation is more complex in intensity mapping to predict the normal and infected region. Generally, image thresholding and static feature based clustering deals with the fixed level of intensity mapping to segment it. Since, the pattern structure of given testing image must need to analyse the cancer level. In this paper, the Enhanced Hopfield Neural Network model with Edge Preserving (EHNN-EP) technique is used for segmenting the cancer region from mammogram image which is to enhance the prediction range of image clustering. Initially, the additive noise can be eliminating by median filter which makes the image smoothening and improve the intensity level. This type of enhancing the image leads to provide the edge details of that image. Also, the HNN performs the repeated learning od image feature which improves the image clustering. The performance report of this proposed method of EHNN can be validate by referring the comparison result of traditional state-of-art methods in two different mammogram image databases. The comparison result represents the performance level of EHNN-EP method that achieves the accuracy percentage as 98.56%.
基于边缘保持的增强Hopfield神经网络(EHNN-EP)在导管原位癌(DCIS)严重程度诊断中的应用
计算机辅助乳房x线图像的肿瘤分割在强度映射预测正常和感染区域方面较为复杂。通常,图像阈值分割和基于静态特征的聚类处理固定强度映射来分割图像。因此,给定检测图像的模式结构必须分析肿瘤的水平。本文采用基于边缘保持的增强Hopfield神经网络模型(EHNN-EP)技术对乳房x线图像中的肿瘤区域进行分割,以提高图像聚类的预测范围。首先,中值滤波可以消除加性噪声,使图像平滑,提高图像的强度等级。这种类型的图像增强导致提供该图像的边缘细节。同时,HNN对图像特征进行重复学习,提高了图像聚类性能。本文提出的EHNN方法的性能报告可以通过在两个不同的乳房x线图像数据库中比较传统的最新方法的结果来验证。对比结果表明了EHNN-EP方法的性能水平,准确率达到98.56%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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