Center for Perceptual Systems, University of Texas at Austin, Austin, TX 78712.
Department of Psychology, University of Texas at Austin, Austin, TX 78712.
Proc Natl Acad Sci U S A. 2017 Jul 11;114(28):E5731-E5740. doi: 10.1073/pnas.1619487114. Epub 2017 Jun 26.
A fundamental everyday visual task is to detect target objects within a background scene. Using relatively simple stimuli, vision science has identified several major factors that affect detection thresholds, including the luminance of the background, the contrast of the background, the spatial similarity of the background to the target, and uncertainty due to random variations in the properties of the background and in the amplitude of the target. Here we use an experimental approach based on constrained sampling from multidimensional histograms of natural stimuli, together with a theoretical analysis based on signal detection theory, to discover how these factors affect detection in natural scenes. We sorted a large collection of natural image backgrounds into multidimensional histograms, where each bin corresponds to a particular luminance, contrast, and similarity. Detection thresholds were measured for a subset of bins spanning the space, where a natural background was randomly sampled from a bin on each trial. In low-uncertainty conditions, both the background bin and the amplitude of the target were fixed, and, in high-uncertainty conditions, they varied randomly on each trial. We found that thresholds increase approximately linearly along all three dimensions and that detection accuracy is unaffected by background bin and target amplitude uncertainty. The results are predicted from first principles by a normalized matched-template detector, where the dynamic normalizing gain factor follows directly from the statistical properties of the natural backgrounds. The results provide an explanation for classic laws of psychophysics and their underlying neural mechanisms.
一项基本的日常视觉任务是在背景场景中检测目标对象。利用相对简单的刺激,视觉科学已经确定了几个影响检测阈值的主要因素,包括背景的亮度、背景的对比度、背景与目标的空间相似性,以及由于背景和目标幅度的随机变化而导致的不确定性。在这里,我们使用基于从自然刺激的多维直方图进行约束采样的实验方法,以及基于信号检测理论的理论分析,来发现这些因素如何影响自然场景中的检测。我们将大量自然图像背景分类到多维直方图中,其中每个 bin 对应于特定的亮度、对比度和相似性。在跨越空间的子集中测量了检测阈值,其中在每次试验中,自然背景是从 bin 中随机采样的。在低不确定性条件下,背景 bin 和目标的幅度都是固定的,而在高不确定性条件下,它们在每次试验中随机变化。我们发现,在所有三个维度上,阈值都近似呈线性增加,并且检测准确性不受背景 bin 和目标幅度不确定性的影响。这些结果可以通过归一化匹配模板检测器从第一原理上进行预测,其中动态归一化增益因子直接来自自然背景的统计特性。结果为经典心理物理学定律及其潜在的神经机制提供了解释。