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Experience With Bayesian Image Based Surface Modeling
Author(s) -
John Stutz
Publication year - 2005
Publication title -
aip conference proceedings
Language(s) - English
Resource type - Conference proceedings
SCImago Journal Rank - 0.177
H-Index - 75
eISSN - 1551-7616
pISSN - 0094-243X
DOI - 10.1063/1.2149798
Subject(s) - computer science , process (computing) , bayesian probability , surface (topology) , artificial intelligence , image (mathematics) , machine learning , computational model , data mining , computer vision , mathematics , geometry , operating system
Bayesian surface modeling from images requires modeling both the surface and the image generation process, in order to optimize the models by comparing actual and generated images. Thus it differs greatly, both conceptually and in computational difficulty, from conventional vusual surface recovery techniques. But it offers the possibility of generating a single surface model that fuses all available information, from any number of images, taken under quite different conditions, and by different instruments that provide independent and often complementary information. I describe an implemented system, with a brief introduction to the underlying mathematical models and the compromises made for computational efficiency. I describe successes and failures achieved on actual imagery, where we went wrong and what we did right, and how our approach could be improved. Lastly I discuss how the same approach can be extended to distinct types of instruments, to achieve true sensor fusion.

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