一种改进的支持向量机核医学图像检索系统

M. S. Kumar, Y. S. Kumaraswamy
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引用次数: 7

摘要

数字医学图像占用了医学数据库的大部分存储空间。数字图像以x光、核磁共振、CT的形式出现。这些医学图像广泛用于诊断和制定治疗方案。以有效的方式从数据库中检索诊断、研究和教育目的所需的医学图像是必不可少的。图像检索系统是通过输入查询图像从数据库中检索相似图像的系统。图像检索系统将图像中的特征提取到特征向量中,并使用相似度量从数据库中检索图像。因此,图像检索系统的效率取决于特征的选择和分类。本文提出了一种新的特征选择机制,利用带有信息增益的离散正弦变换(DST)进行特征约简。将现有支持向量机(SVM)的分类结果与提出的支持向量机模型进行了比较。结果表明,所提SVM分类器优于传统SVM分类器和多层感知器神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved support vector machine kernel for medical image retrieval system
Digital medical images take up most of the storage space in the medical database. Digital images are in the form of X-Rays, MRI, CT. These medical images are extensively used in diagnosis and planning treatment schedule. Retrieving required medical images from the database in an efficient manner for diagnosis, research and educational purposes is essential. Image retrieval systems are used to retrieve similar images from database by inputting a query image. Image retrieval systems extract features in the image to a feature vector and use similarity measures for retrieval of images from the database. So the efficiency of the image retrieval system depends upon the feature selection and its classification. In this paper, it is proposed to implement a novel feature selection mechanism using Discrete Sine Transforms (DST) with Information Gain for feature reduction. Classification results obtained from existing Support Vector Machine (SVM) is compared with the proposed Support Vector Machine model. Results obtained show that the proposed SVM classifier outperforms conventional SVM classifier and multi layer perceptron neural network.
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