Soft SVM and Novel Sampling Rule Based Relevance Feedback for Medical Image Retrieval

Y. Bao, Yifei Zhang, Daling Wang, Jingang Shi
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引用次数: 2

Abstract

In content-based image retrieval, understanding the user’s needs in the process of retrieval is a challenging task. Relevance feedback (RF) has been proven to be an effective method for integrating the user’s knowledge into the retrieval process to eliminate the semantic gap between the high level semantic concept and the low level features of an image. In this paper we present a framework of content-based medical image retrieval with RF based on support vector machine (SVM). In the framework, we design two novel sampling methods, i.e., nearest positive margin sampling algorithm (NPMSA) and positive margin sampling algorithm (PMSA), which can select informative images to feedback to user; and we adopt 10-level soft label instead of 2-level hard label, which increases the annotation accuracy. The results of experiments on medical image database show that the proposed sampling methods, especially NPMSA one, both outperform SVMactive sampling method, and the soft SVM classifier based on the framework behaves better than SVMactive. The convergence speed of RF based on the proposed framework and the sampling methods is faster than that of SVMactive.
基于软支持向量机和新型采样规则的相关反馈医学图像检索
在基于内容的图像检索中,理解用户在检索过程中的需求是一个具有挑战性的任务。相关反馈(RF)已被证明是一种将用户知识整合到检索过程中的有效方法,可以消除图像高层次语义概念与低层次特征之间的语义差距。提出了一种基于支持向量机(SVM)的基于内容的射频医学图像检索框架。在该框架中,我们设计了两种新颖的采样方法,即最接近正余量采样算法(NPMSA)和正余量采样算法(PMSA),它们可以选择信息丰富的图像反馈给用户;采用10级软标签代替2级硬标签,提高了标注精度。在医学图像数据库上的实验结果表明,所提出的采样方法,尤其是NPMSA采样方法,均优于支持向量机(SVMactive)采样方法,并且基于该框架的软支持向量机分类器的性能优于支持向量机(SVMactive)。基于该框架和采样方法的射频信号收敛速度比基于svm的射频信号收敛速度快。
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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