Victor Jonathan D, Rizvi Syed M, Conte Mary M
Feil Family Brain and Mind Research Institute, Weill Cornell Medical College, 1300 York Avenue, New York, NY 10065, United States.
Feil Family Brain and Mind Research Institute, Weill Cornell Medical College, 1300 York Avenue, New York, NY 10065, United States.
Vision Res. 2019 Jun;159:21-34. doi: 10.1016/j.visres.2018.12.003. Epub 2019 Apr 1.
While luminance, contrast, orientation, and terminators are well-established features that are extracted in early visual processing and support the parsing of an image into its component regions, the role of more complex features, such as closure and convexity, is less clear. A main barrier in understanding the roles of such features is that manipulating their occurrence typically entails changes in the occurrence of more elementary features as well. To address this problem, we developed a set of synthetic visual textures, constructed by replacing the binary coloring of standard maximum-entropy textures with tokens (tiles) containing curved or angled elements. The tokens were designed so that there were no discontinuities at their edges, and so that changing the correlation structure of the underlying binary texture changed the shapes that were produced. The resulting textures were then used in psychophysical studies, demonstrating that the resulting feature differences sufficed to drive segmentation. However, in contrast to previous findings for lower-level features, sensitivities to increases and decreases of feature occurrence were unequal. Moreover, the texture-segregation response depended on the kind of token (curved vs. angular, filled-in vs. outlined), and not just on the correlation structure. Analysis of this dependence indicated that simple closed contours and convex elements suffice to drive image segmentation, in the absence of changes in lower-level cues.
虽然亮度、对比度、方向和终端是早期视觉处理中提取的既定特征,并支持将图像解析为其组成区域,但更复杂的特征(如闭合性和凸性)的作用尚不清楚。理解这些特征作用的一个主要障碍是,操纵它们的出现通常也会导致更基本特征的出现发生变化。为了解决这个问题,我们开发了一组合成视觉纹理,通过用包含弯曲或成角度元素的标记(瓦片)替换标准最大熵纹理的二进制着色来构建。这些标记的设计使得它们的边缘没有不连续性,并且改变底层二进制纹理的相关结构会改变产生的形状。然后将所得纹理用于心理物理学研究,表明所得特征差异足以驱动分割。然而,与先前关于低级特征的发现相反,对特征出现增加和减少的敏感度并不相等。此外,纹理分离反应取决于标记的种类(弯曲与成角度、填充与轮廓),而不仅仅取决于相关结构。对这种依赖性的分析表明,在低级线索没有变化的情况下,简单的闭合轮廓和凸元素足以驱动图像分割。