Visual Integration and Detection of Discontinuities: The Key Role of Intensity Edges

Integration of several vision modules is likely to be one of the keys to the power and robustness of the human visual system. The problem of integrating early vision cues is also emerging as a central problem in current computer vision research. In this paper we suggest that integration is bes...

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Main Authors: Gamble, Ed, Poggio, Tomaso
Language:en_US
Published: 2004
Online Access:http://hdl.handle.net/1721.1/6475
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author Gamble, Ed
Poggio, Tomaso
author_facet Gamble, Ed
Poggio, Tomaso
author_sort Gamble, Ed
collection MIT
description Integration of several vision modules is likely to be one of the keys to the power and robustness of the human visual system. The problem of integrating early vision cues is also emerging as a central problem in current computer vision research. In this paper we suggest that integration is best performed at the location of discontinuities in early processes, such as discontinuities in image brightness, depth, motion, texture and color. Coupled Markov Random Field models, based on Bayes estimation techiques, can be used to combine vision modalities with their discontinuities. These models generate algorithms that map naturally onto parallel fine-grained architectures such as the Connection Machine. We derive a scheme to integrate intensity edges with stereo depth and motion field information and show results on synthetic and natural images. The use of intensity edges to integrate other visual cues and to help discover discontinuities emerges as a general and powerful principle.
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spelling mit-1721.1/64752019-04-10T18:33:34Z Visual Integration and Detection of Discontinuities: The Key Role of Intensity Edges Gamble, Ed Poggio, Tomaso Integration of several vision modules is likely to be one of the keys to the power and robustness of the human visual system. The problem of integrating early vision cues is also emerging as a central problem in current computer vision research. In this paper we suggest that integration is best performed at the location of discontinuities in early processes, such as discontinuities in image brightness, depth, motion, texture and color. Coupled Markov Random Field models, based on Bayes estimation techiques, can be used to combine vision modalities with their discontinuities. These models generate algorithms that map naturally onto parallel fine-grained architectures such as the Connection Machine. We derive a scheme to integrate intensity edges with stereo depth and motion field information and show results on synthetic and natural images. The use of intensity edges to integrate other visual cues and to help discover discontinuities emerges as a general and powerful principle. 2004-10-04T14:57:40Z 2004-10-04T14:57:40Z 1987-10-01 AIM-970 http://hdl.handle.net/1721.1/6475 en_US AIM-970 2578544 bytes 2014761 bytes application/postscript application/pdf application/postscript application/pdf
spellingShingle Gamble, Ed
Poggio, Tomaso
Visual Integration and Detection of Discontinuities: The Key Role of Intensity Edges
title Visual Integration and Detection of Discontinuities: The Key Role of Intensity Edges
title_full Visual Integration and Detection of Discontinuities: The Key Role of Intensity Edges
title_fullStr Visual Integration and Detection of Discontinuities: The Key Role of Intensity Edges
title_full_unstemmed Visual Integration and Detection of Discontinuities: The Key Role of Intensity Edges
title_short Visual Integration and Detection of Discontinuities: The Key Role of Intensity Edges
title_sort visual integration and detection of discontinuities the key role of intensity edges
url http://hdl.handle.net/1721.1/6475
work_keys_str_mv AT gambleed visualintegrationanddetectionofdiscontinuitiesthekeyroleofintensityedges
AT poggiotomaso visualintegrationanddetectionofdiscontinuitiesthekeyroleofintensityedges