Title Minimal Conditions on Intrinsic Parameters for Euclidean Reconstruction
Authors Anders Heyden, Karl Åström
Publication Computer Vision - ACCV '98. Third Asian Conference on Computer Vision. Proceedings
Year 1997
Volume 2
Pages 169 - 176
Document type Conference paper
Conference name Computer Vision - ACCV'98
Conference Date 1998-01-08 - 1998-01-10
Conference Location Hong Kong, China
Status Published
Language eng
Publisher Springer verlag
Abstract English We investigate the constraints on the intrinsic parameters that are needed in order to reconstruct an unknown scene from a number of its projective images. Two such minimal cases are studied in detail. Firstly, it is shown that it is sufficient to know the skew parameter, even if all other parameters are unknown and varying, to obtain an Euclidean reconstruction. Secondly, the same thing can be done for known aspect ratio, again when all other intrinsic parameters are unknown and varying. In fact, we show that it is sufficient to know any of the 5 intrinsic parameters to make Euclidean reconstruction. An algorithm, based upon bundle adjustment techniques, to obtain Euclidean reconstruction in the above mentioned cases are presented. Experiments are shown on the slightly simpler case of both known aspect ratio and skew
ISBN/ISSN/Other ISBN: 3 540 63931 4

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