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Tenth IEEE International Conference on Computer Vision (ICCV'05) Volume 1
Simultaneous Multiple 3D Motion Estimation via Mode Finding on Lie Groups
Beijing, China
October 17-October 20
ISBN: 0-7695-2334-X
Oncel Tuzel, Rutgers University
Raghav Subbarao, Rutgers University
Peter Meer, Rutgers University
We propose a new method to estimate multiple rigid motions from noisy 3D point correspondences in the presence of outliers. The method does not require prior specification of number of motion groups and estimates all the motion parameters simultaneously. We start with generating samples from the rigid motion distribution. The motion parameters are then estimated via mode finding operations on the sampled distribution. Since rigid motions do not lie on a vector space, classical statistical methods can not be used for mode finding. We develop a mean shift algorithm which estimates modes of the sampled distribution using the Lie group structure of the rigid motions. We also show that proposed mean shift algorithm is general and can be applied to any distribution having a matrix Lie group structure. Experimental results on synthetic and real image data demonstrate the superior performance of the algorithm.
Citation:
Oncel Tuzel, Raghav Subbarao, Peter Meer, "Simultaneous Multiple 3D Motion Estimation via Mode Finding on Lie Groups," iccv, vol. 1, pp.18-25, Tenth IEEE International Conference on Computer Vision (ICCV'05) Volume 1, 2005
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