Full automatic micro calcification detection in mammogram images using artificial neural network and Gabor wavelets

AmirEhsan Lashkari
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引用次数: 14

Abstract

Nowadays, automatic defect detection in Breast images which obtains from mommogram is very important in many diagnostic and therapeutic applications. This paper introduces a Novel automatic breast abnormality detection method that uses mammogram images to determine any abnormality in breast tissues. Here, has been tried to give clear description from breast tissues using Gabor wavelets, Geometric Moment Invariants(GMIs), energy, entropy, contrast and some other statistic features such as mean, median, variance, correlation, values of maximum and minimum intensity. It is used from a feature selection method to reduce the feature space too. This method uses from neural network to do this classification. The purpose of this project is to classify the breast tissues to normal and abnormal classes automatically, that saves the radiologist time, increases accuracy and yield of diagnosis.
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基于人工神经网络和Gabor小波的乳房x线图像全自动微钙化检测
目前,从乳房x线摄影中获得的乳房图像缺陷自动检测在许多诊断和治疗应用中具有重要意义。本文介绍了一种新的乳房异常自动检测方法,该方法利用乳房x光片图像来确定乳房组织中的任何异常。本文试图利用Gabor小波、几何矩不变量(GMIs)、能量、熵、对比度和其他一些统计特征,如均值、中位数、方差、相关性、最大和最小强度值,对乳腺组织进行清晰的描述。从特征选择的角度来减小特征空间。该方法利用神经网络进行分类。该项目的目的是将乳腺组织自动分为正常和异常两类,从而节省放射科医生的时间,提高诊断的准确性和产出率。
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