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Estimation of Channelized Hotelling Observer Performance with Known Class Means or Known Difference of Class Means

机译:用已知的均值或已知的均值差估计信道化Hotelling观测器性能

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摘要

This paper concerns task-based image quality assessment for the task of discriminating between two classes of images. We address the problem of estimating two widely-used detection performance measures, SNR and AUC, from a finite number of images, assuming that the class discrimination is performed with a channelized Hotelling observer. In particular, we investigate the advantage that can be gained when either (i) the means of the signal-absent and signal-present classes are both known, or (ii) when the difference of class means is known. For these two scenarios, we propose uniformly minimum variance unbiased estimators of SNR2, derive the corresponding sampling distributions and provide variance expressions. In addition, we demonstrate how the bias and variance for the related AUC estimators may be calculated numerically by using the sampling distributions for the SNR2 estimators. We find that for both SNR2 and AUC, the new estimators have significantly lower bias and mean-square error than the traditional estimator, which assumes that the class means, and their difference, are unknown.
机译:本文涉及基于任务的图像质量评估,以区分两类图像。假设使用信道化的Hotelling观测器执行类别识别,我们将解决从有限数量的图像中估计两种广泛使用的检测性能指标SNR和AUC的问题。特别是,我们研究了在以下两种情况下可以获得的优势:(i)既不存在信号类也存在信号存在类,并且(ii)当类均值的差异已知时。针对这两种情况,我们提出了SNR 2 的统一最小方差无偏估计量,导出了相应的采样分布并提供了方差表达式。此外,我们演示了如何通过使用SNR 2 估计量的采样分布来数值计算相关AUC估计量的偏差和方差。我们发现,对于SNR 2 和AUC而言,新的估计量均比传统的估计量具有明显更低的偏差和均方误差,而传统的估计量则假定类别均值及其差值是未知的。

著录项

  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(28),8
  • 年度 -1
  • 页码 1198–1207
  • 总页数 21
  • 原文格式 PDF
  • 正文语种
  • 中图分类
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