首页> 外文期刊>Vision Research: An International Journal in Visual Science >Predicting the psychophysical similarity of faces and non-face complex shapes by image-based measures.
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Predicting the psychophysical similarity of faces and non-face complex shapes by image-based measures.

机译:通过基于图像的度量预测面部和非面部复杂形状的心理物理相似性。

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Shape representation is accomplished by a series of cortical stages in which cells in the first stage (V1) have local receptive fields tuned to contrast at a particular scale and orientation, each well modeled as a Gabor filter. In succeeding stages, the representation becomes largely invariant to Gabor coding (Kobatake & Tanaka, 1994). Because of the non-Gabor tuning in these later stages, which must be engaged for a behavioral response (Tong, 2003; Tong et al., 1998), a V1-based measure of shape similarity based on Gabor filtering would not be expected to be highly correlated with human performance when discriminating complex shapes (faces and teeth-like blobs) that differ metrically on a two-choice, match-to-sample task. Here we show that human performance is highly correlated with Gabor-based image measures (Gabor simple and complex cells), with values often in the mid 0.90s, even without discounting the variability in the speed and accuracy of performance not associated with the similarity of the distractors. This high correlation is generally maintained through the stages of HMAX, a model that builds upon the Gabor metric and develops units for complex features and larger receptive fields. This is the first report of the psychophysical similarity of complex shapes being predictable from a biologically motivated, physical measure of similarity. As accurate as these measures were for accounting for metric variation, a simple demonstration showed that all were insensitive to viewpoint invariant (nonaccidental) differences in shape.
机译:形状表示是通过一系列皮质阶段完成的,在这些阶段中,第一阶段(V1)中的细胞具有被调整为以特定比例和方向形成对比的局部感受野,每个模型都被很好地建模为Gabor滤波器。在随后的阶段中,表示形式在很大程度上与Gabor编码无关(Kobatake&Tanaka,1994)。由于在后期必须进行行为响应才能进行非Gabor调整(Tong,2003; Tong等,1998),因此,基于Gabor滤波的基于V1的形状相似性度量无法预期区分复杂的形状(脸部和牙齿状斑点)时,它们与人类的表现高度相关,而复杂的形状在两项选择的“匹配样本”任务中会有所不同。在这里,我们证明了人类的表现与基于Gabor的图像度量(Gabor简单和复杂单元格)高度相关,其值通常在0.90s左右,即使不降低与速度的相似性无关的速度和准确性的可变性干扰因素。通常在HMAX的各个阶段保持这种高度相关性,HMAX是一种基于Gabor度量并开发出用于复杂特征和较大接收场的单位的模型。这是第一份关于复杂形状的心理物理相似性的报告,该相似性可通过生物学动机的相似性物理测量来预测。这些度量值可以准确地解释度量标准的变化,一个简单的演示表明,它们都对形状不变的视点不变(非偶然)差异不敏感。

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