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Investigating shape perception by classification images

机译:通过分类图像研究形状感知

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Radial frequency (RF) patterns are circular contours where the radius is modulated sinusoidally. These stimuli can represent a wide range of common shapes and have been popular for investigating human shape perception. Theories postulate a multistage model where a global contour integration mechanism integrates the outputs of local curvature-sensitive mechanisms. However, studies on how the local contour features are processed have been mostly based on indirect experimental manipulations. Here, we use a novel way to explore the contour integration, using the classification image (a psychophysical reverse-correlation) method. RF contours were composed of local elements, and random a??radial position noisea?? offsets were added to element radial positions. We analyzed the relationship between trial-to-trial variations in radial noise and corresponding behavioral responses, resulting in a a??shape templatea??: an estimate of the contour parts and features that the visual system uses in the shape discrimination task. Integration of contour features in a global template-like model explains our data well, and we show that observer performance for different shapes can be predicted from the classification images. Classification images show that observers used most of the contour parts. Further analysis suggests linear rather than probability summation of contour parts. Convex forms were detected better than concave forms and the corresponding templates had better sampling efficiency. With sufficient presentation time, we found no systematic preferences for a certain class of contour features (such as corners or sides). However, when the presentation time was very short, the visual system might prefer corner features over side features.
机译:径向频率(RF)模式是圆形轮廓,其中半径以正弦形式进行调制。这些刺激可以代表各种各样的常见形状,并且已广泛用于研究人类的形状感知。理论提出了一个多阶段模型,其中全局轮廓集成机制集成了局部曲率敏感机制的输出。但是,关于局部轮廓特征如何处理的研究主要基于间接实验操作。在这里,我们使用一种新颖的方法,使用分类图像(一种心理物理反向相关)方法来探索轮廓积分。 RF轮廓由局部元素和随机的“径向位置噪声a”组成。偏移量已添加到元素的径向位置。我们分析了径向噪声的试验到试验变化与相应的行为反应之间的关系,从而得到了“形状模板”,即对视觉系统在形状识别任务中使用的轮廓部分和特征的估计。将轮廓特征集成到类似模板的全局模型中可以很好地说明我们的数据,并且我们表明可以从分类图像中预测不同形状的观察者性能。分类图像显示观察者使用了大部分轮廓部分。进一步的分析表明轮廓部分的线性求和而不是概率求和。凸形的检测效果优于凹形,相应的模板具有更好的采样效率。有了足够的演示时间,我们发现对于某些类的轮廓特征(例如角或边)没有系统的偏好。但是,当演示时间很短时,视觉系统可能更喜欢边角特征而不是侧面特征。

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