Natural categorization through multiple feature learning in pigeons.

L Huber, N F Troje, M Loidolt, U Aust, D Grass
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引用次数: 59

Abstract

Recently (Troje, Huber, Loidolt, Aust, & Fieder 1999), we found that pigeons discriminated between large sets of photorealistic frontal images of human faces on the basis of sex. This ability was predominantly based on information contained in the visual texture of those images rather than in their configural properties. The pigeons could learn the distinction even when differences of shape and average intensity were completely removed. Here, we proved more specifically the pigeons' flexibility and efficiency to utilize the class-distinguishing information contained in complex natural classes. First, we used principal component as well as discriminant function analysis in order to determine which aspects of the male and female images could support successful categorization. We then conducted various tests involving systematic transformations and reduction of the feature content to examine whether or not the pigeons' categorization behaviour comes under the control of category-level feature dimensions--that is, those stimulus aspects that most accurately divide the stimulus classes into the experimenter-defined categories of "Male" and "Female". Enhanced classification ability in the presence of impoverished test faces that varied only along one of the first three principal components provided evidence that the pigeons used these class-distinguishing stimulus aspects as a basis for generalization to new instances.

鸽子多特征学习的自然分类。
最近(Troje, Huber, Loidolt, Aust, & Fieder 1999),我们发现鸽子根据性别区分了大量逼真的人脸正面图像。这种能力主要是基于这些图像的视觉纹理所包含的信息,而不是它们的结构属性。即使完全去除形状和平均强度的差异,鸽子也能学会这种区别。在这里,我们更具体地证明了鸽子利用复杂自然类别中包含的类别区分信息的灵活性和效率。首先,我们使用主成分和判别函数分析,以确定哪些方面的男性和女性图像可以支持成功的分类。然后,我们进行了各种测试,包括系统转换和减少特征内容,以检查鸽子的分类行为是否受到类别水平特征维度的控制——即那些最准确地将刺激类别划分为实验者定义的“雄性”和“雌性”类别的刺激方面。在只沿着前三个主成分之一变化的贫困测试面孔存在时,增强的分类能力提供了证据,表明鸽子使用这些区分类别的刺激方面作为概括新实例的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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