Department of Cognitive Science and the ARC Centre of Excellence in Cognition and its Disorders CCD, Macquarie University, Macquarie Park, New South Wales, Australia.
PLoS One. 2013;8(2):e56126. doi: 10.1371/journal.pone.0056126. Epub 2013 Feb 15.
Studying illusions provides insight into the way the brain processes information. The Müller-Lyer Illusion (MLI) is a classical geometrical illusion of size, in which perceived line length is decreased by arrowheads and increased by arrowtails. Many theories have been put forward to explain the MLI, such as misapplied size constancy scaling, the statistics of image-source relationships and the filtering properties of signal processing in primary visual areas. Artificial models of the ventral visual processing stream allow us to isolate factors hypothesised to cause the illusion and test how these affect classification performance. We trained a feed-forward feature hierarchical model, HMAX, to perform a dual category line length judgment task (short versus long) with over 90% accuracy. We then tested the system in its ability to judge relative line lengths for images in a control set versus images that induce the MLI in humans. Results from the computational model show an overall illusory effect similar to that experienced by human subjects. No natural images were used for training, implying that misapplied size constancy and image-source statistics are not necessary factors for generating the illusion. A post-hoc analysis of response weights within a representative trained network ruled out the possibility that the illusion is caused by a reliance on information at low spatial frequencies. Our results suggest that the MLI can be produced using only feed-forward, neurophysiological connections.
研究幻觉可以深入了解大脑处理信息的方式。穆勒-莱尔错觉(Müller-Lyer Illusion,MLI)是一种大小的经典几何错觉,其中感知线的长度通过箭头的前端而减小,通过箭头的后端而增大。许多理论都被提出来解释 MLI,例如错误应用的大小恒常性缩放、图像源关系的统计和初级视觉区域中的信号处理的滤波特性。腹侧视觉处理流的人工模型使我们能够隔离假设导致错觉的因素,并测试这些因素如何影响分类性能。我们训练了一个前馈特征分层模型 HMAX,以超过 90%的准确率执行双重类别线长判断任务(短与长)。然后,我们测试了该系统判断控制集图像与在人类中引起 MLI 的图像的相对线长度的能力。计算模型的结果显示出与人类受试者相似的整体错觉效应。没有使用自然图像进行训练,这意味着错误应用的大小恒常性和图像源统计并不是产生错觉的必要因素。在一个代表性的训练网络中对响应权重的事后分析排除了错觉是由对低空间频率信息的依赖引起的可能性。我们的结果表明,仅使用前馈、神经生理学连接就可以产生 MLI。