Application of multi-dimensional quality measures to reconstructed medical images

A. Eskicioglu
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引用次数: 19

Abstract

Lossy compression drastically reduces the operating costs of digital medical imaging systems by allowing more efficient use of transmission and archival facilities in hospitals and doctors' offices. To be able to develop standards for the application of this technology, reliable tools are needed for measuring the quality of reconstructed images. Among the most common measures presently used, the normalized mean squared error (NMSE) does not provide any information concerning the type of impairment, and receiver operating characteristic (ROC) analyses are expensive and time-consuming. This paper evaluates the performance of three quantitative multi-dimensional measures for image quality. Mimicking the human visual system, they compute local features, and produce a graphical output. Eskicioglu charts, in particular, are shown to be an appropriate tool for characterizing compression losses in reconstructed medical images.<>
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多维质量测度在医学图像重建中的应用
有损压缩允许更有效地利用医院和医生办公室的传输和存档设施,从而大大降低了数字医学成像系统的运营成本。为了能够为这项技术的应用制定标准,需要可靠的工具来测量重建图像的质量。在目前使用的最常用的测量方法中,归一化均方误差(NMSE)不能提供有关损伤类型的任何信息,而受试者工作特征(ROC)分析既昂贵又耗时。本文对图像质量的三种定量多维度量的性能进行了评价。它们模仿人类的视觉系统,计算局部特征,并产生图形输出。特别是,Eskicioglu图表被证明是表征重建医学图像中压缩损失的适当工具。
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