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Dicoogle a Pacs Featuring Profiled Content Based Image Retrieval

机译:Dicoogle一个具有基于概要内容的图像检索功能的Pacs

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摘要

Content-based image retrieval (CBIR) has been heralded as a mechanism to cope with the increasingly larger volumes of information present in medical imaging repositories. However, generic, extensible CBIR frameworks that work natively with Picture Archive and Communication Systems (PACS) are scarce. In this article we propose a methodology for parametric CBIR based on similarity profiles. The architecture and implementation of a profiled CBIR system, based on query by example, atop Dicoogle, an open-source, full-fletched PACS is also presented and discussed. In this solution, CBIR profiles allow the specification of both a distance function to be applied and the feature set that must be present for that function to operate. The presented framework provides the basis for a CBIR expansion mechanism and the solution developed integrates with DICOM based PACS networks where it provides CBIR functionality in a seamless manner.
机译:基于内容的图像检索(CBIR)已被视为应对医学影像存储库中越来越多的信息的一种机制。但是,缺乏可与图片存档和通信系统(PACS)一起使用的通用,可扩展的CBIR框架。在本文中,我们提出了一种基于相似性概况的参数CBIR方法。还介绍并讨论了基于示例查询的概要CBIR系统的体系结构和实现,该示例基于Dicoogle,开源的完整PACS。在此解决方案中,CBIR配置文件允许指定要应用的距离功能以及该功能运行所必须具备的功能集。提出的框架为CBIR扩展机制提供了基础,并且所开发的解决方案与基于DICOM的PACS网络集成在一起,从而以无缝方式提供CBIR功能。

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