Schwarzkopf D Samuel, Kourtzi Zoe
School of Psychology, University of Birmingham, Edgbaston, Birmingham B15 2TT, United Kingdom.
Curr Biol. 2008 Aug 5;18(15):1162-7. doi: 10.1016/j.cub.2008.06.072.
Segmenting meaningful targets from cluttered scenes is a fundamental function of the visual system. Evolution and development have been suggested to optimize the brain's solution to this computationally challenging task by tuning the visual system to features that co-occur frequently in natural scenes (e.g., collinear edges) [1, 2, 3]. However, the role of shorter-term experience in shaping the utility of scene statistics remains largely unknown. Here, we ask whether collinearity is a specialized case, or whether the brain can learn to recruit any image regularity for the purpose of target identification. Consistent with long-term optimization for typical scene statistics, observers were better at detecting collinear contours than configurations of elements oriented at orthogonal or acute angles to the contour path. However, training resulted in improved detection of orthogonal contours that lasted for several months, suggesting retuning rather than transient changes of visual sensitivity. Improvement was also observed for acute contours but only after longer training. These results demonstrate that the brain flexibly exploits image regularities and learns to use discontinuities typically associated with surface boundaries (orthogonal, acute alignments) for contour linking and target identification. Thus, short-term experience in adulthood shapes the interpretation of scenes by assigning new statistical utility to image regularities.
从杂乱场景中分割出有意义的目标是视觉系统的一项基本功能。进化和发育被认为是通过将视觉系统调整到自然场景中频繁共现的特征(如共线边缘)来优化大脑解决这一计算难题的方案[1, 2, 3]。然而,短期经验在塑造场景统计效用方面的作用在很大程度上仍不为人知。在这里,我们要问共线性是一种特殊情况,还是大脑能够学会为了目标识别而利用任何图像规律。与对典型场景统计的长期优化一致,观察者在检测共线轮廓方面比检测与轮廓路径呈正交或锐角的元素配置表现得更好。然而,训练导致对正交轮廓的检测得到改善,这种改善持续了几个月,这表明是视觉敏感性的重新调整而非短暂变化。对于锐角轮廓也观察到了改善,但只是在更长时间的训练之后。这些结果表明,大脑灵活地利用图像规律,并学会利用通常与表面边界相关的不连续性(正交、锐角对齐)进行轮廓连接和目标识别。因此,成年期的短期经验通过为图像规律赋予新的统计效用,塑造了对场景的解读。