Medical Image Retrieval with Query-Dependent Feature Fusion Based on One-Class SVM

Y. Huang, Jun Zhang, Yongwang Zhao, Dian-fu Ma
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引用次数: 18

Abstract

Due to the huge growth of the World Wide Web, medical images are now available in large numbers in online repositories, and there exists the need to retrieval the images through automatically extracting visual information of the medical images, which is commonly known as content-based image retrieval (CBIR). Since each feature extracted from images just characterizes certain aspect of image content, multiple features are necessarily employed to improve the retrieval performance. Meanwhile, experiments demonstrate that a special feature is not equally important for different image queries. Most of existed feature fusion methods for image retrieval only utilize query independent feature fusion or rely on explicit user weighting. In this paper, we present a novel query dependent feature fusion method for medical image retrieval based on one class support vector machine. Having considered that a special feature is not equally important for different image queries, the proposed query dependent feature fusion method can learn different feature fusion models for different image queries only based on multiply image samples provided by the user, and the learned feature fusion models can re¿ect the different importances of a special feature for different image queries. The experimental results on the IRMA medical image collection demonstrate that the proposed method can improve the retrieval performance effectively and can outperform existed feature fusion methods for image retrieval.
基于一类支持向量机的查询相关特征融合医学图像检索
由于万维网的飞速发展,医学图像大量存在于在线存储库中,需要通过自动提取医学图像的视觉信息来检索图像,这通常被称为基于内容的图像检索(CBIR)。由于从图像中提取的每个特征只表征了图像内容的某一方面,因此必须使用多个特征来提高检索性能。同时,实验表明,对于不同的图像查询,一个特殊的特征并不同等重要。现有的图像检索特征融合方法大多采用与查询无关的特征融合或依赖显式用户加权。提出了一种基于一类支持向量机的医学图像查询相关特征融合方法。考虑到某一特定特征对不同图像查询的重要性不相同,本文提出的基于查询的特征融合方法仅基于用户提供的多个图像样本就可以学习到不同图像查询的不同特征融合模型,并且学习到的特征融合模型可以反映不同图像查询中某一特定特征的不同重要性。在IRMA医学图像采集上的实验结果表明,该方法可以有效地提高检索性能,并优于现有的特征融合图像检索方法。
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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