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立体视差有助于对实体多部分物体进行形状识别时的视图泛化。

Stereo disparity facilitates view generalization during shape recognition for solid multipart objects.

作者信息

Cristino Filipe, Davitt Lina, Hayward William G, Leek E Charles

机构信息

a School of Psychology , Bangor University , Bangor , UK.

b School of Psychology , University of Auckland , Auckland , New Zealand.

出版信息

Q J Exp Psychol (Hove). 2015;68(12):2419-36. doi: 10.1080/17470218.2015.1017512. Epub 2015 Mar 13.

Abstract

Current theories of object recognition in human vision make different predictions about whether the recognition of complex, multipart objects should be influenced by shape information about surface depth orientation and curvature derived from stereo disparity. We examined this issue in five experiments using a recognition memory paradigm in which observers (N = 134) memorized and then discriminated sets of 3D novel objects at trained and untrained viewpoints under either mono or stereo viewing conditions. In order to explore the conditions under which stereo-defined shape information contributes to object recognition we systematically varied the difficulty of view generalization by increasing the angular disparity between trained and untrained views. In one series of experiments, objects were presented from either previously trained views or untrained views rotated (15°, 30°, or 60°) along the same plane. In separate experiments we examined whether view generalization effects interacted with the vertical or horizontal plane of object rotation across 40° viewpoint changes. The results showed robust viewpoint-dependent performance costs: Observers were more efficient in recognizing learned objects from trained than from untrained views, and recognition was worse for extrapolated than for interpolated untrained views. We also found that performance was enhanced by stereo viewing but only at larger angular disparities between trained and untrained views. These findings show that object recognition is not based solely on 2D image information but that it can be facilitated by shape information derived from stereo disparity.

摘要

当前人类视觉中的物体识别理论,对于复杂多部分物体的识别是否应受源自立体视差的表面深度方向和曲率的形状信息影响,做出了不同预测。我们通过五个实验研究了这个问题,采用识别记忆范式,让观察者(N = 134)在单眼或立体观看条件下,记忆并区分在训练和未训练视角下的3D新奇物体集合。为了探究立体定义的形状信息有助于物体识别的条件,我们通过增加训练和未训练视角之间的角度差异,系统地改变了视图泛化的难度。在一系列实验中,物体从先前训练的视角或沿同一平面旋转(15°、30°或60°)的未训练视角呈现。在单独的实验中,我们研究了视图泛化效应是否与物体在40°视角变化时的垂直或水平旋转平面相互作用。结果显示出强烈的视角依赖性能成本:观察者从训练视角识别已学物体比从未训练视角更高效,并且外推的未训练视角的识别比内插的未训练视角更差。我们还发现,立体观看可提高性能,但仅在训练和未训练视角之间的角度差异较大时。这些发现表明,物体识别并非仅基于二维图像信息,而是可以由源自立体视差的形状信息促进。

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