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Principal component analysis for content-based image retrieval.

机译:基于内容的图像检索的主成分分析。

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摘要

Most picture archiving and communication systems provide image search capabilities that support queries based on patient demographics and study descriptions. In a preliminary study, principal component analysis was used to represent and retrieve images on the basis of content. Principal component analysis reduces the dimensionality of the search to a basis set of prototype images that best describes the images. Each image is described by its projection on the basis set; a match to a query image is determined by comparing its projection vector on the basis set with that of the images in the database. The training image database consisted of 100 axial brain images from a three-dimensional T1-weighted magnetic resonance imaging study. The algorithm was evaluated by using 96 axial images from eight patients. Image retrieval was considered accurate if the automated algorithm returned the match section to within 3 mm of an expert-selected section; the retrieval accuracy was 83% when the images were preprocessed for uniformity in intensity and geometry. Principal component analysis can be applied to content-based retrieval of medical images. The algorithm is designed to be part of an automated image selection module that filters relevant images from an imaging study.
机译:大多数图片存档和通信系统都提供图像搜索功能,这些功能支持基于患者人口统计和研究描述的查询。在初步研究中,主成分分析用于根据内容表示和检索图像。主成分分析将搜索的维数减少到最能描述图像的原型图像的基础集。每个图像都通过在基集上的投影来描述。通过将查询图像的投影向量(基于基集)与数据库中图像的投影向量进行比较,可以确定与查询图像的匹配。训练图像数据库包含来自三维T1加权磁共振成像研究的100个轴向脑图像。通过使用来自八位患者的96张轴向图像来评估算法。如果自动算法将匹配部分返回专家选择部分的3 mm以内,则认为图像检索是准确的;当对图像进行强度和几何形状的均匀处理时,检索精度为83%。主成分分析可以应用于基于内容的医学图像检索。该算法被设计为自动图像选择模块的一部分,该模块从成像研究中过滤掉相关图像。

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