Burgess A E
Brigham and Women's Hospital, Harvard Medical School, Boston, Massachusetts 02115, USA.
J Opt Soc Am A Opt Image Sci Vis. 1999 Mar;16(3):694-704. doi: 10.1364/josaa.16.000694.
Detection of signals in natural images and scenes is limited by both noise and structure. The purpose of this study is to investigate phenomenological issues of signal detection in two-component noise. One component had a broadband (white) spectrum designed to simulate image noise. The other component was filtered to simulate two classes of low-pass background structure spectra: Gaussian-filtered noise and power-law noise. Measurements of human and model observer performance are reported for several aperiodic signals and both classes of background spectra. Human results are compared with two classes of observer models and are fitted very well by suboptimal prewhitening matched filter models. The nonprewhitening model with an eye filter does not agree with human results when background-noise-component power spectrum bandwidths are less than signal energy bandwidths.
在自然图像和场景中信号的检测受到噪声和结构的双重限制。本研究的目的是探讨双分量噪声中信号检测的现象学问题。一个分量具有宽带(白色)频谱,旨在模拟图像噪声。另一个分量经过滤波,以模拟两类低通背景结构频谱:高斯滤波噪声和幂律噪声。报告了针对几种非周期性信号以及两类背景频谱的人类和模型观察者性能的测量结果。将人类结果与两类观察者模型进行了比较,并且通过次优预白化匹配滤波器模型得到了很好的拟合。当背景噪声分量功率谱带宽小于信号能量带宽时,带有视觉滤波器的非预白化模型与人类结果不一致。