A expert system for stomach cancer images with artificial neural network by using HOG features and linear discriminant analysis: HOG_LDA_ANN

S. A. Korkmaz, Hamidullah Binol, Aysegul Akcicek, M. Korkmaz
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引用次数: 25

Abstract

In this study, normal (n), benign (b), and malign (m) stomach image cells have taken from faculty of Medicine the Fırat University with Light Microscope help. Total number of stomach images are 180 which be 60 n, 60 b, and 60 m. 90 of these 180 stomach images have been used for testing purposes and 90 have used for training purposes. The histograms of oriented gradient (HOG) feature vectors have been obtained for normal, benign, and malign original stomach images. The size of these HOG feature vectors is 46900×180. High-dimensional of these HOG feature vectors is reduced to lower-dimensional with Linear Discriminant Analysis (LDA). These low-dimensional data are 180×180. These low-dimensional data are classified as normal benign and malign by artificial neural network (ANN) classification. Thus, HOG_LDA_ANN method for stomach cancer images have developed. Diagnostic accuracy of classification results with this method has found as 88.9%. According to the other methods, this result has higher accuracy result. And this result has found in a shorter time.
基于HOG特征和线性判别分析的人工神经网络胃癌图像专家系统:HOG_LDA_ANN
在这项研究中,正常(n)、良性(b)和恶性(m)的胃图像细胞在光学显微镜的帮助下取自Fırat大学医学院。胃图像总数为180张,分别为60n, 60b和60m。其中90张胃图像用于测试目的,90张用于训练目的。得到了正常、良性、恶性胃原图像的定向梯度(HOG)特征向量直方图。这些HOG特征向量的大小为46900×180。利用线性判别分析(LDA)将这些HOG特征向量的高维降为低维。这些低维数据是180×180。通过人工神经网络(ANN)对这些低维数据进行正常、良性和恶性分类。因此,发展了胃癌图像的HOG_LDA_ANN方法。该方法对分类结果的诊断准确率为88.9%。与其他方法相比,该结果具有更高的精度。而且这个结果是在较短的时间内发现的。
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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