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Summary Statistics and Material Categorization in the Visual Periphery

机译:视觉外围设备中的摘要统计和材料分类

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摘要

Material categorization from natural texture images proceeds quickly and accurately, supporting a number of visual and motor behaviors. In real-world settings, mechanisms for material categorization must function effectively based on the input from foveal vision, where image representation is high fidelity, and the input from peripheral vision, which is comparatively impoverished. What features support successful material categorization in the visual periphery, given the known reductions in acuity, contrast sensitivity, and other lossy transforms that reduce the fidelity of image representations? In general, the visual features that support material categorization remain largely unknown, but recent work suggests that observers' abilities in a number of tasks that depend on peripheral vision can be accounted for by assuming that the visual system has access to only summary statistics (texture-like descriptors) of image structure. We therefore hypothesized that a model of peripheral vision based on the Portilla-Simoncelli texture synthesis algorithm might account for material categorization abilities in the visual periphery. Using natural texture images and synthetic images made from these stimuli, we compared performance across material categories to determine whether observer performance with natural inputs could be predicted by their performance with synthetic images that reflect the constraints of a texture code.
机译:从自然纹理图像进行的材料分类快速准确地进行,支持了许多视觉和运动行为。在实际环境中,材料分类的机制必须有效地基于中央凹视觉的输入(其中图像表示具有很高的保真度)和来自周边视觉的输入(相对较差)。鉴于已知的敏锐度,对比度敏感度和其他有损变换降低了图像表示的保真度,已知在视觉外围进行成功的材料分类的功能有哪些?通常,支持材料分类的视觉功能仍然未知,但是最近的工作表明,通过假设视觉系统只能访问摘要统计信息(纹理),可以说明观察者在许多依赖于外围视觉的任务中的能力。类描述符)。因此,我们假设基于Portilla-Simoncelli纹理合成算法的外围视觉模型可能会解释视觉外围的材料分类能力。通过使用自然纹理图像和由这些刺激产生的合成图像,我们比较了各种材料类别的性能,以确定是否可以通过其具有反映纹理代码约束的合成图像的性能来预测具有自然输入的观察者性能。

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