Ahmed Moumen, Farag Aly
Electrical Engineering Department, Assiut University, Assiut 71516, Egypt.
IEEE Trans Image Process. 2005 Aug;14(8):1215-30. doi: 10.1109/tip.2005.846025.
This paper addresses the problem of calibrating camera lens distortion, which can be significant in medium to wide angle lenses. Our approach is based on the analysis of distorted images of straight lines. We derive new distortion measures that can be optimized using nonlinear search techniques to find the best distortion parameters that straighten these lines. Unlike the other existing approaches, we also provide fast, closed-form solutions to the distortion coefficients. We prove that including both the distortion center and the decentering coefficients in the nonlinear optimization step may lead to instability of the estimation algorithm. Our approach provides a way to get around this, and, at the same time, it reduces the search space of the calibration problem without sacrificing the accuracy and produces more stable and noise-robust results. In addition, while almost all existing nonmetric distortion calibration methods needs user involvement in one form or another, we present a robust approach to distortion calibration based on the least-median-of-squares estimator. Our approach is, thus, able to proceed in a fully automatic manner while being less sensitive to erroneous input data such as image curves that are mistakenly considered projections of three-dimensional linear segments. Experiments to evaluate the performance of this approach on synthetic and real data are reported.
本文探讨了相机镜头畸变校准问题,该问题在中广角镜头中可能较为显著。我们的方法基于对直线畸变图像的分析。我们推导了新的畸变度量,可使用非线性搜索技术对其进行优化,以找到使这些直线变直的最佳畸变参数。与其他现有方法不同,我们还提供了畸变系数的快速闭式解。我们证明,在非线性优化步骤中同时包含畸变中心和偏心系数可能会导致估计算法不稳定。我们的方法提供了一种解决此问题的途径,同时在不牺牲准确性的情况下减少了校准问题的搜索空间,并产生更稳定且抗噪声的结果。此外,虽然几乎所有现有的非度量畸变校准方法都需要用户以某种形式参与,但我们提出了一种基于最小二乘中位数估计器的鲁棒畸变校准方法。因此,我们的方法能够以全自动方式进行,同时对错误输入数据(如被错误地视为三维线性段投影的图像曲线)不太敏感。报告了评估该方法在合成数据和真实数据上性能的实验。