基于单应矩阵分解的多相机系统平面标定算法

T. Ueshiba, F. Tomita
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引用次数: 81

摘要

提出了一种基于平面参考模式的多相机标定算法。该算法是Sturm-Maybank-Zhang风格的基于平面的校准技术的扩展,适用于多摄像机。相机之间的刚性位移以及固有参数只有通过捕捉相机的模型飞机与已知的参考点放置在三个或更多的位置。因此,该算法为具有任意数量摄像机的立体视觉系统提供了一种简单的校准方法,同时保持了原始方法的方便性和灵活性。该算法基于将模型与图像平面之间的单应性矩阵分解为相机和图像平面参数。为了补偿比例因子的不确定性,每个同调矩阵由两个视图和两个模型平面定义的平面同调的双特征值重新缩放。最后通过非线性极大似然估计(MLE)过程对得到的参数进行细化。通过仿真和实测数据验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plane-based calibration algorithm for multi-camera systems via factorization of homography matrices
A new calibration algorithm for multicamera systems using a planar reference pattern is proposed. The algorithm is an extension of Sturm-Maybank-Zhang style plane-based calibration technique for use with multiple cameras. Rigid displacements between the cameras are recovered as well as the intrinsic parameters only by capturing with the cameras a model plane with known reference points placed at three or more locations. Thus the algorithm yields a simple calibration means for stereo vision systems with an arbitrary number of cameras while maintaining the handiness and flexibility of the original method. The algorithm is based on factorization of homography matrices between the model and image planes into the camera and plane parameters. To compensate for the indetermination of scaling factors, each homography matrix is rescaled by a double eigenvalue of a planar homology defined by two views and two model planes. The obtained parameters are finally refined by a nonlinear maximum likelihood estimation (MLE) process. The validity of the proposed technique was verified through simulation and experiments with real data.
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