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Building High Dimensional Imaging Database for Content Based Image Search

机译:构建基于内容的图像搜索的高维成像数据库

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In medical imaging informatics, content-based image retrieval (CBIR) techniques are employed to aid radiologists in the retrieval of images with similar image contents. CBIR uses visual contents, normally called as image features, to search images from large scale image databases according to users' requests in the form of a query image. However, most of current CBIR systems require a distance computation of image character feature vectors to perform query, and the distance computations can be time consuming when the number of image character features grows large, and thus this limits the usability of the systems. In this presentation, we propose a novel framework which uses a high dimensional database to index the image character features to improve the accuracy and retrieval speed of a CBIR in integrated RIS/PACS.
机译:在医学成像信息学中,采用基于内容的图像检索(CBIR)技术来帮助放射科学家在具有相似图像内容的图像的检索中。 CBIR使用视觉内容,通常称为图像特征,根据用户的铭牌图像的请求从大规模图像数据库中搜索图像。然而,大多数当前CBIR系统需要对图像字符特征向量的距离计算来执行查询,并且当图像字符特征的数量变大时,距离计算可能是耗时的,因此这限制了系统的可用性。在本演示文稿中,我们提出了一种新颖的框架,它使用高维数据库来索引图像字符特征,以提高集成RIS / PAC中CBIR的准确性和检索速度。

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