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Robust and Efficient 3D Recognition by Alignment

Author(s)
Alter, Tao Daniel
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Abstract
Alignment is a prevalent approach for recognizing 3D objects in 2D images. A major problem with current implementations is how to robustly handle errors that propagate from uncertainties in the locations of image features. This thesis gives a technique for bounding these errors. The technique makes use of a new solution to the problem of recovering 3D pose from three matching point pairs under weak-perspective projection. Furthermore, the error bounds are used to demonstrate that using line segments for features instead of points significantly reduces the false positive rate, to the extent that alignment can remain reliable even in cluttered scenes.
Date issued
1992-09-01
URI
http://hdl.handle.net/1721.1/6799
Other identifiers
AITR-1410
Series/Report no.
AITR-1410
Keywords
computer vision, object recognition, error models, salignment, weak perspective, pose estimation

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