基于合并方案的医学x射线图像分类

M. Zare, M. Awedh, A. Mueen, Woo Chaw Seng
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引用次数: 5

摘要

由于计算机医学图像的快速发展,近十年来医学图像分类的研究领域非常活跃。本文从医学x射线图像的分类出发,提出了一种实现高识别率的方法。该方法基于局部二值模式作为特征提取技术,支持向量机(SVM)作为分类器。该分类模型是基于合并方案建立的,将重叠的类相互合并,并重新训练SVM分类器来构建模型。合并方案中使用的重叠类是根据它们的准确率、误分类率和身体解剖结构的相似性来检测的。在一个包含36类医学x射线图像的数据库上对该算法进行了评估,这些图像具有很高的类间相似性和类内变异性。该模型的准确率为91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Merging Scheme-based Classification of Medical X-ray Images
Due to rapid growth of computerized medical imagery, the research area of medical image classification has been very active for the past decade. This paper presents an approach to achieve high recognition rate from classification of medical x-ray images. The methodology is based on local binary pattern as a feature extraction technique and support vector machine (SVM) as a classifier. This classification model was built based on merging scheme where overlapped classes were combined with each other and SVM classifier was re-trained to construct the model. The overlapped classes used in merging scheme are detected based on their accuracy, miss-classification ratio and similarity in their body anatomy. The proposed algorithm was evaluated on a database consisting of 36 classes of medical X-ray images which are suffering from high inter-class similarity and intra-class variability. The accuracy rate obtained for this model is 91%.
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