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Humans make efficient use of natural image statistics when performing spatial interpolation

机译:在执行空间插值时人类可以有效利用自然图像统计信息

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摘要

Visual systems learn through evolution and experience over the lifespan to exploit the statistical structure of natural images when performing visual tasks. Understanding which aspects of this statistical structure are incorporated into the human nervous system is a fundamental goal in vision science. To address this goal, we measured human ability to estimate the intensity of missing image pixels in natural images. Human estimation accuracy is compared with various simple heuristics (e.g., local mean) and with optimal observers that have nearly complete knowledge of the local statistical structure of natural images. Human estimates are more accurate than those of simple heuristics, and they match the performance of an optimal observer that knows the local statistical structure of relative intensities (contrasts). This optimal observer predicts the detailed pattern of human estimation errors and hence the results place strong constraints on the underlying neural mechanisms. However, humans do not reach the performance of an optimal observer that knows the local statistical structure of the absolute intensities, which reflect both local relative intensities and local mean intensity. As predicted from a statistical analysis of natural images, human estimation accuracy is negligibly improved by expanding the context from a local patch to the whole image. Our results demonstrate that the human visual system exploits efficiently the statistical structure of natural images.
机译:视觉系统在整个生命周期中通过进化和经验来学习,以在执行视觉任务时利用自然图像的统计结构。了解这种统计结构的哪些方面已纳入人的神经系统是视觉科学的基本目标。为了实现这一目标,我们测量了人类估计自然图像中缺失图像像素强度的能力。将人类估计的准确性与各种简单的启发式算法(例如局部均值)以及具有几乎完全了解自然图像的局部统计结构知识的最佳观察者进行比较。人为的估计比简单的启发式方法更准确,并且它们与了解相对强度(对比度)的局部统计结构的最佳观察者的性能匹配。这个最佳的观察者可以预测人类估计错误的详细模式,因此结果对潜在的神经机制施加了强大的约束。但是,人类无法达到了解绝对强度的局部统计结构的最佳观察者的性能,该结构既反映了局部相对强度又反映了局部平均强度。正如根据自然图像的统计分析所预测的那样,通过将上下文从局部补丁扩展到整个图像,可以大大提高人类估计的准确性。我们的结果表明,人类视觉系统可以有效利用自然图像的统计结构。

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