Probabilistic Principles in Unsupervised Learning of Visual Structure: Human Data and a Model
To find out how the representations of structured visual objects depend on the co-occurrence statistics of their constituents, we exposed subjects to a set of composite images with tight control exerted over (1) the conditional probabilities of the constituent fragments, and (2) the value of Barlow&...
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sg-smu-ink.soss_research-14432014-01-09T05:17:20Z Probabilistic Principles in Unsupervised Learning of Visual Structure: Human Data and a Model Edelman, Shimon Hiles, Benjamin P. YANG, Hwajin Intrator, Nathan To find out how the representations of structured visual objects depend on the co-occurrence statistics of their constituents, we exposed subjects to a set of composite images with tight control exerted over (1) the conditional probabilities of the constituent fragments, and (2) the value of Barlow's criterion of "suspicious coincidence" (the ratio of joint probability to the product of marginals). We then compared the part verification response times for various probe/target combinations before and after the exposure. For composite probes, the speedup was much larger for targets that contained pairs of fragments perfectly predictive of each other, compared to those that did not. This effect was modulated by the significance of their co-occurrence as estimated by Barlow's criterion. For lone-fragment probes, the speedup in all conditions was generally lower than for composites. These results shed light on the brain's strategies for unsupervised acquisition of structural information in vision. 2001-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/soss_research/444 https://ink.library.smu.edu.sg/context/soss_research/article/1443/viewcontent/YangHwajinNIPS2002Prob_AFV.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School of Social Sciences eng Institutional Knowledge at Singapore Management University Learning modeling visual struction structural information brain Cognition and Perception |
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Learning modeling visual struction structural information brain Cognition and Perception Edelman, Shimon Hiles, Benjamin P. YANG, Hwajin Intrator, Nathan Probabilistic Principles in Unsupervised Learning of Visual Structure: Human Data and a Model |
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To find out how the representations of structured visual objects depend on the co-occurrence statistics of their constituents, we exposed subjects to a set of composite images with tight control exerted over (1) the conditional probabilities of the constituent fragments, and (2) the value of Barlow's criterion of "suspicious coincidence" (the ratio of joint probability to the product of marginals). We then compared the part verification response times for various probe/target combinations before and after the exposure. For composite probes, the speedup was much larger for targets that contained pairs of fragments perfectly predictive of each other, compared to those that did not. This effect was modulated by the significance of their co-occurrence as estimated by Barlow's criterion. For lone-fragment probes, the speedup in all conditions was generally lower than for composites. These results shed light on the brain's strategies for unsupervised acquisition of structural information in vision. |
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text |
author |
Edelman, Shimon Hiles, Benjamin P. YANG, Hwajin Intrator, Nathan |
author_facet |
Edelman, Shimon Hiles, Benjamin P. YANG, Hwajin Intrator, Nathan |
author_sort |
Edelman, Shimon |
title |
Probabilistic Principles in Unsupervised Learning of Visual Structure: Human Data and a Model |
title_short |
Probabilistic Principles in Unsupervised Learning of Visual Structure: Human Data and a Model |
title_full |
Probabilistic Principles in Unsupervised Learning of Visual Structure: Human Data and a Model |
title_fullStr |
Probabilistic Principles in Unsupervised Learning of Visual Structure: Human Data and a Model |
title_full_unstemmed |
Probabilistic Principles in Unsupervised Learning of Visual Structure: Human Data and a Model |
title_sort |
probabilistic principles in unsupervised learning of visual structure: human data and a model |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2001 |
url |
https://ink.library.smu.edu.sg/soss_research/444 https://ink.library.smu.edu.sg/context/soss_research/article/1443/viewcontent/YangHwajinNIPS2002Prob_AFV.pdf |
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