Generic self-calibration of central cameras

Computer Vision and Image Understanding(2010)

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摘要
We consider the self-calibration problem for a generic imaging model that assigns projection rays to pixels without a parametric mapping. We consider the central variant of this model, which encompasses all camera models with a single effective viewpoint. Self-calibration refers to calibrating a camera's projection rays, purely from matches between images, i.e. without knowledge about the scene such as using a calibration grid. In order to do this we consider specific camera motions, concretely, pure translations and rotations, although without the knowledge of rotation and translation parameters (rotation angles, axis of rotation, translation vector). Knowledge of the type of motion, together with image matches, gives geometric constraints on the projection rays. We show for example that with translational motions alone, self-calibration can already be performed, but only up to an affine transformation of the set of projection rays. We then propose algorithms for full metric self-calibration, that use rotational and translational motions or just rotational motions.
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关键词
camera model,rotation angle,pure translation,rotational motion,generic self-calibration,generic imaging models,self-calibration problem,translation parameter,full metric self-calibration,generic imaging model,omnidirectional cameras,generic imaging models self-calibration omnidirectional cameras,projection ray,central camera,specific camera motion,self-calibration,affine transformation,axis of rotation
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