Vollmerhausen Richard H
Opt Express. 2009 Sep 28;17(20):17253-68. doi: 10.1364/OE.17.017253.
Electro-optical target acquisition models predict the probability that a human observer recognizes or identifies a target. To accurately model targeting performance, the impact of imager blur and noise on human vision must be quantified. In the most widely used target acquisition models, human vision is treated as a "black box" that is characterized by its signal transfer response and detection thresholds. This paper describes an engineering model of observer vision. Characteristics of the observer model are compared to psychophysical data. This paper also describes how to integrate the observer model into both reflected light and thermal sensor models.
电光目标捕获模型可预测人类观察者识别或辨认目标的概率。为了准确模拟瞄准性能,必须对成像器模糊和噪声对人类视觉的影响进行量化。在最广泛使用的目标捕获模型中,人类视觉被视为一个“黑匣子”,其特征在于其信号传递响应和检测阈值。本文描述了一种观察者视觉的工程模型。将观察者模型的特性与心理物理学数据进行了比较。本文还描述了如何将观察者模型集成到反射光和热传感器模型中。