Three-dimensional object recognition is viewpoint dependent

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作者
Michael J. Tarr
Pepper Williams
William G. Hayward
Isabel Gauthier
机构
[1] Brown University,Department of Cognitive and Linguistic Sciences
[2] University of Massachusetts,Department of Psychology
[3] University of Wollongong,Department of Psychology
[4] Yale University,Department of Psychology
来源
Nature Neuroscience | 1998年 / 1卷
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摘要
The human visual system is faced with the computationally difficult problem of achieving object constancy: identifying three-dimensional (3D) objects via two-dimensional (2D) retinal images that may be altered when the same object is seen from different viewpoints1. A widely accepted class of theories holds that we first reconstruct a description of the object's 3D structure from the retinal image, then match this representation to a remembered structural description. If the same structural description is reconstructed from every possible view of an object, object constancy will be obtained. For example, in Biederman's2 oft-cited recognition-by-components (RBC) theory, structural descriptions are composed of sets of simple 3D volumes called geons (Fig. 1), along with the spatial relations in which the geons are placed. Thus a mug is represented in RBC as a noodle attached to the side of a cylinder, and a suitcase as a noodle attached to the top of a brick. The attraction of geons is that, unlike more complex objects, they possess a small set of defining properties that appear in their 2D projections when viewed from almost any position (e.g., all three views of the brick in Fig. 1 include a straight main axis, parallel edges, and a straight cross section). According to the RBC theory, a complex object can therefore be recognized from its constituent geons, which can themselves be recognized from any viewpoint.Figure 1Shaded images of the three views of the ten geons used in the experiments, along with names assigned in experiment 3.The leftmost figure in each row was arbitrarily designated the 0° view; the other two figures represent 45° and 90° rotations of the objects in the depth plane.[graphic not available: see fulltext]
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页码:275 / 277
页数:2
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