首页> 外文会议>Image Perception, Observer Performance, and Technology Assessment; Progress in Biomedical Optics and Imaging; vol.8,no.34; Proceedings of SPIE-The International Society for Optical Engineering; vol.6515 >A contrast-sensitive channelized-Hotelling observer to predict human performance in a detection task using lumpy backgrounds and Gaussian signals
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A contrast-sensitive channelized-Hotelling observer to predict human performance in a detection task using lumpy backgrounds and Gaussian signals

机译:对比敏感的Channelling-Hotelling观测器,可使用块状背景和高斯信号预测检测任务中的人类表现

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Previously, a non-prewhitening matched filter (NPWMF) incorporating a model for the contrast sensitivity of the human visual system was introduced for modeling human performance in detection tasks with different viewing angles and white-noise backgrounds by Badano et al. But NPWMF observers do not perform well detection tasks involving complex backgrounds since they do not account for random backgrounds. A channelized-Hotelling observer (CHO) using difference-of-Gaussians (DOG) channels has been shown to track human performance well in detection tasks using lumpy backgrounds. In this work, a CHO with DOG channels, incorporating the model of the human contrast sensitivity, was developed similarly. We call this new observer a contrast-sensitive CHO (CS-CHO). The Barten model was the basis of our human contrast sensitivity model. A scalar was multiplied to the Barten model and varied to control the thresholding effect of the contrast sensitivity on luminance-valued images and hence the performance-prediction ability of the CS-CHO. The performance of the CS-CHO was compared to the average human performance from the psychophysical study by Park et al., where the task was to detect a known Gaussian signal in non-Gaussian distributed lumpy backgrounds. Six different signal-intensity values were used in this study. We chose the free parameter of our model to match the mean human performance in the detection experiment at the strongest signal intensity. Then we compared the model to the human at five different signal-intensity values in order to see if the performance of the CS-CHO matched human performance. Our results indicate that the CS-CHO with the chosen scalar for the contrast sensitivity predicts human performance closely as a function of signal intensity.
机译:先前,Badano等人引入了一种非预白匹配滤镜(NPWMF),该滤镜结合了人类视觉系统的对比敏感度模型,用于在具有不同视角和白噪声背景的检测任务中对人类表现进行建模。但是NPWMF观察者不能很好地执行涉及复杂背景的检测任务,因为他们没有考虑随机背景。使用高斯差异(DOG)通道的通道化的Hotelling观测器(CHO)已被证明可以很好地跟踪使用块状背景的检测任务中的人类表现。在这项工作中,类似地开发了具有人道敏感性模型的带有DOG通道的CHO。我们称这个新的观察者为对比敏感的CHO(CS-CHO)。 Barten模型是我们人类对比敏感度模型的基础。将标量乘以Barten模型并进行更改,以控制对比度敏感度对亮度值图像的阈值作用,从而控制CS-CHO的性能预测能力。将CS-CHO的性能与Park等人进行的心理物理研究得出的平均人类性能进行了比较,该研究的任务是在非高斯分布的块状背景中检测已知的高斯信号。在这项研究中使用了六个不同的信号强度值。我们选择了模型的自由参数,以匹配信号强度最强的检测实验中的平均人类性能。然后,我们在五个不同的信号强度值下将模型与人类进行了比较,以查看CS-CHO的性能是否与人类的性能相匹配。我们的结果表明,针对对比敏感度选择了标量的CS-CHO可以紧密预测人的表现与信号强度的关系。

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