An optimization framework for efficient self-calibration and motion determination

Q. Luong, O. Faugeras
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引用次数: 20

Abstract

The problem of calibrating a camera is extremely important for practical applications. While classical work is based on the use of a calibration pattern whose 3D model is a priori known, self-calibration methods have also been investigated. These methods require only point matches obtained during unknown motions, without any a priori knowledge of the scenes. However, the method initially presented by Faugeras, Luong and Maybank (1992) was computationally expensive and sensitive to noise. In this paper, we propose an alternative method to compute at the same time camera calibration and motion, which is robust and efficient. This method allows also to take into account the important trinocular constraints. The practical applicability of our algorithm is illustrated with numerous real examples, which includes 3D reconstruction.
一种高效自标定和运动确定的优化框架
相机的标定问题在实际应用中是极其重要的。虽然经典的工作是基于使用其三维模型先验已知的校准模式,但也研究了自校准方法。这些方法只需要在未知运动中获得点匹配,而不需要任何先验的场景知识。然而,最初由Faugeras, Luong和Maybank(1992)提出的方法在计算上昂贵且对噪声敏感。在本文中,我们提出了一种同时计算摄像机标定和运动的替代方法,该方法鲁棒且高效。这种方法还允许考虑重要的三视约束。通过包括三维重建在内的大量实例说明了算法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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