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Medical X-ray Images Classification Based on Shape Features and Bayesian Rule

机译:基于形状特征和贝叶斯规则的医学X射线图像分类

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The most important stage of search and content retrieval systems of medical images is image classification. The purpose of classification is execution of a process in which a medical image is assigned to a pre-determined class among several classes. In this paper, a classification based on Bayesian rule which makes use of image features in order to classify medical X-ray images is put forward. The main stages of the proposed algorithm are pre-processing, feature extraction, and Bayesian classifier. In the pre-processing stage, in order to reduce the noise and improve the contrast, an ' adaptive local histogram, a median filter, edge detection filters, thresholding methods, and morphological operators are used for the purpose of clarifying the areas'- with bones. Subsequently shape features such as Fourier Descriptor, Invariant Moments, and Zernike Moments are extracted from the image. Ultimately, using Bayesian rule, classification is carried out on an X-ray image dataset consisting of 4937 images. The proposed classification algorithm obtains the accuracy rate of 82.87% for a 28-class classification problem.
机译:医学图像搜索和内容检索系统最重要的阶段是图像分类。分类的目的是执行将医学图像分配给几个类别中的预定类别的处理。本文提出了一种基于贝叶斯规则的分类方法,该方法利用图像特征对医学X射线图像进行分类。该算法的主要阶段是预处理,特征提取和贝叶斯分类器。在预处理阶段,为了减少噪声并提高对比度,使用了“自适应局部直方图,中值滤波器,边缘检测滤波器,阈值方法和形态运算符”以明确区域。骨头。随后从图像中提取形状特征,例如傅立叶描述符,不变矩和Zernike矩。最终,使用贝叶斯规则对包含4937张图像的X射线图像数据集进行分类。所提出的分类算法对28类分类问题的准确率为82.87%。

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