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Optimal Query-Based Relevance Feedback in Medical Image Retrieval Using Score Fusion-Based Classification

机译:基于分数融合的分类在医学图像检索中基于查询的最佳相关反馈

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摘要

In this paper, a new content-based medical image retrieval (CBMIR) framework using an effective classification method and a novel relevance feedback (RF) approach are proposed. For a large-scale database with diverse collection of different modalities, query image classification is inevitable due to firstly, reducing the computational complexity and secondly, increasing influence of data fusion by removing unimportant data and focus on the more valuable information. Hence, we find probability distribution of classes in the database using Gaussian mixture model (GMM) for each feature descriptor and then using the fusion of obtained scores from the dependency probabilities, the most relevant clusters are identified for a given query. Afterwards, visual similarity of query image and images in relevant clusters are calculated. This method is performed separately on all feature descriptors, and then the results are fused together using feature similarity ranking level fusion algorithm. In the RF level, we propose a new approach to find the optimal queries based on relevant images. The main idea is based on density function estimation of positive images and strategy of moving toward the aggregation of estimated density function. The proposed framework has been evaluated on ImageCLEF 2005 database consisting of 10,000 medical X-ray images of 57 semantic classes. The experimental results show that compared with the existing CBMIR systems, our framework obtains the acceptable performance both in the image classification and in the image retrieval by RF.
机译:本文提出了一种使用有效分类方法的新的基于内容的医学图像检索(CBMIR)框架和一种新颖的相关性反馈(RF)方法。对于具有不同模式的不同集合的大规模数据库,由于以下原因,查询图像分类是不可避免的:首先,降低了计算复杂性;其次,通过删除不重要的数据并关注更有价值的信息来增加数据融合的影响。因此,我们使用高斯混合模型(GMM)为每个特征描述符找到数据库中类的概率分布,然后使用从相关性概率中获得的分数进行融合,从而为给定查询标识出最相关的聚类。然后,计算查询图像和相关聚类中图像的视觉相似度。对所有特征描述符分别执行此方法,然后使用特征相似度等级融合算法将结果融合在一起。在RF级别,我们提出了一种新方法,可以根据相关图像找到最佳查询。主要思想是基于对正像的密度函数估计和向估计的密度函数聚合的策略。所提出的框架已在ImageCLEF 2005数据库中进行了评估,该数据库由10,000个具有57个语义类别的医学X射线图像组成。实验结果表明,与现有的CBMIR系统相比,我们的框架在图像分类和RF图像检索方面均获得了可接受的性能。

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