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结构化背景下的视觉信号检测。III. 统计非平稳背景中模型观察者的品质因数计算。

Visual signal detection in structured backgrounds. III. Calculation of figures of merit for model observers in statistically nonstationary backgrounds.

作者信息

Bochud F O, Abbey C K, Eckstein M P

机构信息

Department of Medical Physics and Imaging, Cedars Sinai Medical Center, Los Angeles, California 90048-1865, USA.

出版信息

J Opt Soc Am A Opt Image Sci Vis. 2000 Feb;17(2):193-205. doi: 10.1364/josaa.17.000193.

Abstract

Models of human visual detection have been successfully used in computer-generated noise. For these backgrounds, which are generally statistically stationary, model performance can be readily calculated by computing the index of detectability d' from the noise power spectrum, the signal profile, and the model template. However, model observers are ultimately needed in more real backgrounds, which may be statistically non-stationary. We investigated different methods to calculate figures of merit for model observers in real backgrounds based on different assumptions about image stationarity. We computed performance of the nonpre-whitening matched-filter observer with an eye filter on mammography and coronary angiography for an additive or a multiplicative signal. Performance was measured either by applying the model template to the images or by computing closed-form expressions with various assumptions about image stationarity. Results show first that the structured backgrounds investigated cannot be considered stationary. Second, traditional closed-form expressions of detectability calculated from the noise power spectra with the assumption of background stationarity lead to erroneous estimates of model performance. Third, the most accurate way of measuring model performances is by directly applying the model template on the images or by computing a closed-form expression that does not assume image stationarity.

摘要

人类视觉检测模型已成功应用于计算机生成的噪声中。对于这些通常在统计上平稳的背景,可以通过从噪声功率谱、信号轮廓和模型模板计算可检测性指数d'来轻松计算模型性能。然而,在更真实的背景(可能在统计上是非平稳的)中最终需要模型观察者。我们基于对图像平稳性的不同假设,研究了计算真实背景下模型观察者优值的不同方法。我们计算了在乳腺摄影和冠状动脉造影中,带有眼滤波器的非预白化匹配滤波器观察者对于加性或乘性信号的性能。通过将模型模板应用于图像或通过在关于图像平稳性的各种假设下计算闭式表达式来测量性能。结果首先表明,所研究的结构化背景不能被视为平稳的。其次,在背景平稳性假设下从噪声功率谱计算的传统可检测性闭式表达式会导致对模型性能的错误估计。第三,测量模型性能最准确的方法是直接将模型模板应用于图像或通过计算不假设图像平稳性的闭式表达式。

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