Tjan Bosco S, Liu Zili
Max Planck Institute of Biological Cybernetics, Tübingen, Germany.
J Vis. 2005 Dec 16;5(10):888-900. doi: 10.1167/5.10.10.
Objects in the world, natural and artificial alike, are often bilaterally symmetric. The visual system is likely to take advantage of this regularity to encode shapes for efficient object recognition. The nature of encoding a symmetric shape, and of encoding any departure from it, is therefore an important matter in visual perception. We addressed this issue of shape encoding empirically, noting that a particular encoding scheme necessarily leads to a specific profile of sensitivity in perceptual discriminations. We studied symmetry discrimination using human faces and random dots. Each face stimulus was a frontal view of a three-dimensional (3-D) face model. The 3-D face model was a linearly weighted average (a morph) between the model of an original face and that of the corresponding mirror face. Using this morphing technique to vary the degree of asymmetry, we found that, for faces and analogously generated random-dot patterns alike, symmetry discrimination was worst when the stimuli were nearly symmetric, in apparent opposition to almost all studies in the literature. We analyzed the previous work and reconciled the old and new results using a generic model with a simple nonlinearity. By defining asymmetry as the minimal difference between the left and right halves of an object, we found that the visual system was disproportionately more sensitive to larger departures from symmetry than to smaller ones. We further demonstrated that our empirical and modeling results were consistent with Weber-Fechner's and Stevens's laws.
世界上的物体,无论是自然的还是人造的,通常都是左右对称的。视觉系统可能会利用这种规律性来对形状进行编码,以实现高效的物体识别。因此,对称形状的编码本质以及对任何偏离对称的编码本质,都是视觉感知中的重要问题。我们通过实证研究来解决形状编码这个问题,注意到一种特定的编码方案必然会在感知辨别中导致特定的敏感度分布。我们使用人脸和随机点来研究对称性辨别。每个面部刺激都是一个三维(3-D)面部模型的正视图。这个3-D面部模型是原始面部模型与其相应镜像面部模型之间的线性加权平均值(一种变形)。使用这种变形技术来改变不对称程度,我们发现,对于人脸以及类似生成的随机点图案来说,当刺激几乎对称时,对称性辨别最差,这明显与文献中的几乎所有研究结果相反。我们分析了先前的研究工作,并使用一个具有简单非线性的通用模型来调和新旧结果。通过将不对称定义为物体左右两半之间的最小差异,我们发现视觉系统对较大程度偏离对称的情况比对较小程度的情况更为敏感。我们进一步证明,我们的实证和建模结果与韦伯 - 费希纳定律和史蒂文斯定律是一致的。