Stereo disparity facilitates view generalization during shape recognition for solid multipart objects
Stereo disparity facilitates view generalization during shape recognition for solid multipart objects
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.
2419 - 2436
Cristino, Filipe
b47224fa-e770-4e31-9371-4737be3e1e50
Davitt, Lina I.
87f1b38d-a7e9-4034-be91-05ed9a6b011c
Leek, Elwyn
6f63c405-e28f-4f8c-8ead-3b0a79c7dc88
Hayward, William G.
1ba62220-8ce4-4217-a8df-5c79b83a9419
2015
Cristino, Filipe
b47224fa-e770-4e31-9371-4737be3e1e50
Davitt, Lina I.
87f1b38d-a7e9-4034-be91-05ed9a6b011c
Leek, Elwyn
6f63c405-e28f-4f8c-8ead-3b0a79c7dc88
Hayward, William G.
1ba62220-8ce4-4217-a8df-5c79b83a9419
Cristino, Filipe, Davitt, Lina I., Leek, Elwyn and Hayward, William G.
(2015)
Stereo disparity facilitates view generalization during shape recognition for solid multipart objects.
Quarterly Journal of Experimental Psychology, 68 (12), .
(doi:10.1080/17470218.2015.1017512).
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.
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Published date: 2015
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Local EPrints ID: 494498
URI: http://eprints.soton.ac.uk/id/eprint/494498
ISSN: 1747-0218
PURE UUID: 05c096b3-cedd-4856-89e4-195abe3862bc
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Date deposited: 09 Oct 2024 16:56
Last modified: 10 Oct 2024 02:09
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Author:
Filipe Cristino
Author:
Lina I. Davitt
Author:
Elwyn Leek
Author:
William G. Hayward
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