Query dependent multiview features fusion for effective medical image retrieval

Hualei Shen, Yongwang Zhao, Dian-fu Ma, Yong Guan
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引用次数: 1

Abstract

Multiple features have been employed for content-based medical image retrieval. To reduce curse of dimensionality, subspace learning techniques have been applied to learn a low-dimensional subspace from multiple features. Most of the existing methods have two drawbacks: first, they ignore the fact that multiple features have complementary properties, and thus have different contributions to construct the final subspace; second, they construct the optimal subspace without considering user's query preference, i.e., for a same query example, different users want different query results. In this paper, we propose a new method termed Query Dependent Multiview Features Fusion (QDMFF) for content-based medical image retrieval. Inspired by ideas of multiview subspace learning and relevance feedback, QDMFF iteratively learns an optimal subspace by fusing multiple features obtained from user feedback examples. The method operates in the following four stages: first, in local patch construction, local patch is constructed for each feedback example in different feature space; second, in patches combination, all patches within different feature spaces are assigned different weights and unified as a whole one; third, in linear approximation, the projection between original high dimensional feature spaces and the final low-dimensional subspace is approximated by a linear projection; finally, in alternating optimization, the alternating optimization trick is utilized to solve the optimal subspace. Experimental results on IRMA medical image data set demonstrate the effectiveness of QDMFF.
基于查询相关多视图特征融合的医学图像检索
基于内容的医学图像检索采用了多种特征。为了减少维数的损失,应用子空间学习技术从多个特征中学习低维子空间。现有的方法大多存在两个缺点:一是忽略了多个特征具有互补性质,因而对构造最终子空间的贡献不同;其次,在不考虑用户查询偏好的情况下构造最优子空间,即对于同一个查询示例,不同的用户需要不同的查询结果。本文提出了一种基于查询相关多视图特征融合(QDMFF)的医学图像检索方法。QDMFF受多视图子空间学习和相关反馈思想的启发,通过融合从用户反馈示例中获得的多个特征,迭代地学习最优子空间。该方法分为四个阶段:首先,在局部补丁构建阶段,对每个反馈样例在不同的特征空间中构建局部补丁;其次,在斑块组合中,对不同特征空间内的斑块赋予不同的权重,统一为一个整体;第三,在线性逼近中,将原始高维特征空间与最终低维子空间之间的投影用线性投影逼近;最后,在交替优化中,利用交替优化技巧求解最优子空间。在IRMA医学图像数据集上的实验结果证明了QDMFF算法的有效性。
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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