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ID 19959
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Sort Key
7
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Author
Rangrajan Prasanna
Abstract
We present highly accurate least-squares (LS) alternatives to the theoretically optimal maximum likelihood (ML) estimator for homographies between two images. Unlike ML, our estimators are non-iterative and yield solutions even in the presence of large noise. By rigorous error analysis, we derive a “hyperaccurate” estimator which is unbiased up to second order noise terms. Then, we introduce a computational simplification, which we call “Taubin approximation”, without incurring a loss in accuracy. We experimentally demonstrate that our estimators have accuracy surpassing the traditional LS estimator and comparable to the ML estimator.
Publication Title
Memoirs of the Faculty of Engineering, Okayama University
Published Date
2010-01
Volume
volume44
Publisher
Faculty of Engineering, Okayama University
Publisher Alternative
岡山大学工学部
Start Page
50
End Page
59
ISSN
1349-6115
NCID
AA12014085
Content Type
Departmental Bulletin Paper
OAI-PMH Set
岡山大学
language
English
File Version
publisher
NAID
Eprints Journal Name
mfe