4.7 Article

Robust metric calibration of non-linear camera lens distortion

期刊

PATTERN RECOGNITION
卷 43, 期 4, 页码 1688-1699

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2009.10.003

关键词

Lens distortion; Camera calibration; Metric method; Robust estimator

资金

  1. Spanish government (CICYT) [DPI2006-15320-C03-01]
  2. European Community
  3. R&D&I Linguistic Assistance Office, Universidad Politecnica de Valencia (Spain)

向作者/读者索取更多资源

Camera lens distortion is crucial to obtain the best performance cameral model. Up to now, different techniques exist, which try to minimize the calibration error using different lens distortion models or computing them in different ways. Some compute lens distortion camera parameters in the camera calibration process together with the intrinsic and extrinsic ones. Others isolate the lens distortion calibration without using any template and basing the calibration on the deformation in the image of some features of the objects in the scene, like straight lines or circles. These lens distortion techniques which do not use any calibration template can be unstable if a complete camera lens distortion model is computed. They are named non-metric calibration or self-calibration methods. Traditionally a camera has been always best calibrated if metric calibration is done instead of self-calibration. This paper proposes a metric calibration technique which computes the camera lens distortion isolated from the camera calibration process under stable conditions, independently of the computed lens distortion model or the number of parameters. To make it easier to resolve, this metric technique uses the same calibration template that will be used afterwards for the calibration process. Therefore, the best performance of the camera lens distortion calibration process is achieved, which is transferred directly to the camera calibration process. (C) 2009 Elsevier Ltd. All rights reserved.

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