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2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'01) - Volume 1
Bayesian Color Constancy for Outdoor Object Recognition
Kauai, Hawaii
December 08-December 14
ISBN: 0-7695-1272-0
Yanghai Tsin, Carnegie Mellon University
Robert T. Collins, Carnegie Mellon University
Visvanathan Ramesh, Siemens Corporate Research
Takeo Kanade, Carnegie Mellon University
Outdoor scene classification is challenging due to irregular geometry, uncontrolled illumination, and noisy reflectance distributions. This paper discusses a Bayesian approach to classifying a color image of an outdoor scene. A likelihood model factors in the physics of the image formation process, the sensor noise distribution, and prior distributions over geometry, material types, and illuminant spectrum parameters. These prior distributions are learned through a training process that uses color observations of planar scene patches over time. An iterative linear algorithm estimates the maximum likelihood reflectance, spectrum, geometry, and object class labels for a new image. Experiments on images taken by outdoor surveillance cameras classify known material types and shadow regions correctly, and flag as outliers material types that were not seen previously.
Citation:
Yanghai Tsin, Robert T. Collins, Visvanathan Ramesh, Takeo Kanade, "Bayesian Color Constancy for Outdoor Object Recognition," cvpr, vol. 1, pp.1132, 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'01) - Volume 1, 2001
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