Schmidtmann Gunnar, Jennings Ben J, Kingdom Frederick A A
McGill Vision Research, Department of Ophthalmology, McGill University Montreal General Hospital, L11, 416 1650 Avenue Cedar, Montréal, Québec, H3G 1A4 Canada.
Sci Rep. 2015 Nov 24;5:17142. doi: 10.1038/srep17142.
Visual objects are effortlessly recognized from their outlines, largely irrespective of viewpoint. Previous studies have drawn different conclusions regarding the importance to shape recognition of specific shape features such as convexities and concavities. However, most studies employed familiar objects, or shapes without curves, and did not measure shape recognition across changes in scale and position. We present a novel set of random shapes with well-defined convexities, concavities and inflections (intermediate points), segmented to isolate each feature type. Observers matched the segmented reference shapes to one of two subsequently presented whole-contour shapes (target or distractor) that were re-scaled and re-positioned. For very short segment lengths, performance was significantly higher for convexities than for concavities or intermediate points and for convexities remained constant with increasing segment length. For concavities and intermediate points, performance improved with increasing segment length, reaching convexity performance only for long segments. No significant differences between concavities and intermediates were found. These results show for the first time that closed curvilinear shapes are encoded using the positions of convexities, rather than concavities or intermediate regions. A shape-template model with no free parameters gave an excellent account of the data.
视觉对象能够从其轮廓中轻松识别出来,很大程度上不受视角的影响。先前的研究对于诸如凸度和凹度等特定形状特征对形状识别的重要性得出了不同结论。然而,大多数研究使用的是熟悉的物体或没有曲线的形状,并且没有测量跨尺度和位置变化的形状识别。我们提出了一组新颖的随机形状,它们具有明确的凸度、凹度和拐点(中间点),并进行了分割以分离每种特征类型。观察者将分割后的参考形状与随后呈现的两个重新缩放和重新定位的全轮廓形状(目标或干扰物)之一进行匹配。对于非常短的片段长度,凸度的表现显著高于凹度或中间点,并且凸度的表现随着片段长度的增加而保持不变。对于凹度和中间点,表现随着片段长度的增加而提高,仅在长片段时达到凸度的表现。未发现凹度和中间点之间有显著差异。这些结果首次表明,封闭曲线形状是通过凸度的位置进行编码的,而不是通过凹度或中间区域。一个没有自由参数的形状模板模型对数据给出了很好的解释。