Jiulong Xiong, Qi Zhang, Junying Xia, Shan Peng, F. Luo
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引用次数: 4
摘要
提出了一种改进的基于主动视觉系统的自标定方法。控制相机在平面上直接移动,并在相机坐标中围绕x轴旋转5次或更多,然后我们根据图像中的极轴校准相机。与其他方法相比,该方法提高了表极的精度和鲁棒性。Maybank和Faugeras(1)提出了基于Kruppa方程的运动摄像机自标定理论。在此基础上,提出了多种自标定方法。这些方法都需要求解非线性方程,求解起来比较困难。Ma给出了一种基于主动视觉系统的线性自标定方法(2)。摄像机在两个垂直平面上移动两次,然后利用扩展焦点(Focus of Expansion)建立线性方程,求解摄像机内部参数。该方法通过假设偏差因子为零来进行自校准。上述方法在五因子模型中不适用,本文介绍了一种不需要三维空间平面信息的五因子模型中求解相机内部参数的方法。
A Linear Self-Calibration Method Based on Active Vision System
This paper presented an improved self-calibrate method based on active vision system. The camera was controlled to move directly in a plane and rotated around the X-axis in the camera coordinates in five times or more, then we calibrated the camera by the epipoles in the images. This method improved the accuracy and robust of the epipoles, compared with other method. The theory based on Kruppa equation of self-calibration of a moving camera was put forward by Maybank and Faugeras(1). Then, a lot of self-calibration methods were put forward. All these methods need to solve non-linear equations which are hard to work out. Ma gave a linear self-calibration method based on active vision system(2). The camera moved twice in the two plumb planes, and then the FOE (Focus of Expansion) was used to create linear equations and solve the internal camera parameters. The method carried out self- calibration by assuming that the skew factors are equal to zero. Those methods mentioned above don't work in the 5 factors model, and this paper introduced a method which can solve the internal camera parameters in 5 factors model without the plane information of the 3D space.