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Content base image retrieval design optimization for MRI brain tumor images

机译:MRI脑肿瘤图像的内容库图像检索设计与优化

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摘要

In the current years, advancements in medical imaging have prompted the rise of some massive databases, including the pictures from a different scope of modalities. Content based image retrieval (CBIR) is a kind of search that selects examples from an image set that have a similar content to an input query image. Each CBIR system consists of two substantial factors, feature extraction and similarity measure. Based on the type of these parts, many CBIR systems are proposed. In this paper we present not only how to design a CBIR system for MRI brain Tumor images, but also a comparison between the different implemented CBIR systems and ours. Furthermore, in this research, using a DML (Distance Metric Learning) instead of the rigid distance metric such as Euclidean distance as the Similarity measure has helped the researchers to obtain a better mAP (mean Average Precision) as the result. The experimental results of our CBIR system show that it has a better performance than other rivals in the field. The obtained mean average precision of our CBIR system is 92.41 that is significant in MRI brain tumor.
机译:近年来,医学影像学的进步促使一些大型数据库的兴起,其中包括来自不同模态范围的图片。基于内容的图像检索(CBIR)是一种搜索,它从图像集中选择与输入查询图像具有相似内容的示例。每个CBIR系统都包含两个重要因素,即特征提取和相似性度量。基于这些部分的类型,提出了许多CBIR系统。在本文中,我们不仅介绍如何设计用于MRI脑肿瘤图像的CBIR系统,而且还介绍了不同实现的CBIR系统与我们的系统之间的比较。此外,在这项研究中,使用DML(距离度量学习)代替诸如欧几里得距离之类的刚性距离度量作为相似度度量,已经帮助研究人员获得了更好的mAP(平均平均精度)。我们的CBIR系统的实验结果表明,它比该领域的其他竞争对手具有更好的性能。我们的CBIR系统获得的平均平均精度为92.41,这在MRI脑肿瘤中非常重要。

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