Faculty of Engineering & Applied Science, Memorial University of Newfoundland, St.John’s, NL A1B 3X5, Canada.
IEEE Trans Image Process. 2012 Feb;21(2):626-37. doi: 10.1109/TIP.2011.2164421. Epub 2011 Aug 12.
In the field of machine vision, camera calibration refers to the experimental determination of a set of parameters that describe the image formation process for a given analytical model of the machine vision system. Researchers working with low-cost digital cameras and off-the-shelf lenses generally favor camera calibration techniques that do not rely on specialized optical equipment, modifications to the hardware, or an a priori knowledge of the vision system. Most of the commonly used calibration techniques are based on the observation of a single 3-D target or multiple planar (2-D) targets with a large number of control points. This paper presents a novel calibration technique that offers improved accuracy, robustness, and efficiency over a wide range of lens distortion. This technique operates by minimizing the error between the reconstructed image points and their experimentally determined counterparts in "distortion free" space. This facilitates the incorporation of the exact lens distortion model. In addition, expressing spatial orientation in terms of unit quaternions greatly enhances the proposed calibration solution by formulating a minimally redundant system of equations that is free of singularities. Extensive performance benchmarking consisting of both computer simulation and experiments confirmed higher accuracy in calibration regardless of the amount of lens distortion present in the optics of the camera. This paper also experimentally confirmed that a comprehensive lens distortion model including higher order radial and tangential distortion terms improves calibration accuracy.
在机器视觉领域,相机校准是指通过实验确定一组参数,这些参数描述了给定机器视觉系统分析模型的图像形成过程。研究人员使用低成本的数字相机和现成的镜头,通常倾向于使用不依赖于专用光学设备、硬件修改或视觉系统先验知识的相机校准技术。大多数常用的校准技术都是基于观察具有大量控制点的单个 3D 目标或多个平面(2D)目标。本文提出了一种新的校准技术,该技术在广泛的镜头失真范围内提供了更高的精度、鲁棒性和效率。该技术通过最小化重建图像点与其在“无失真”空间中实验确定的对应点之间的误差来工作。这便于包含精确的镜头失真模型。此外,用单位四元数表示空间方向极大地增强了所提出的校准解决方案,因为它形成了一个没有奇点的最小冗余方程组。包括计算机模拟和实验在内的广泛性能基准测试证实,无论相机光学器件中的镜头失真程度如何,校准的精度都更高。本文还通过实验证实,包括更高阶径向和切向失真项的全面镜头失真模型可以提高校准精度。