In this paper, we aim to estimate the relative pose and focal length between two views with known intrinsic parameters except for an unknown focal length from two affine correspondences (ACs). Cameras are commonly used in combination with inertial measurement units (IMUs) in applications such as self-driving cars, smartphones, and unmanned aerial vehicles. The vertical direction of camera views can be obtained by IMU measurements. The relative pose between two cameras is reduced from 5DOF to 3DOF. We propose a new solver to estimate the 3DOF relative pose and focal length. First, we establish constraint equations from two affine correspondences when the vertical direction is known. Then, based on the properties of the equation system with nontrivial solutions, four equations can be derived. These four equations only involve two parameters: the focal length and the relative rotation angle. Finally, the polynomial eigenvalue method is utilized to solve the problem of focal length and relative rotation angle. The proposed solver is evaluated using synthetic and real-world datasets. The results show that our solver performs better than the existing state-of-the-art solvers.
翻译:本文旨在从两个仿射对应关系出发,在除焦距外其他内参已知的条件下,估计两个视图之间的相对位姿与焦距。相机常与惯性测量单元结合应用于自动驾驶汽车、智能手机和无人机等场景。通过IMU测量可获得相机视图的垂直方向,从而使两相机间的相对位姿自由度从5DOF降至3DOF。我们提出一种新的求解器来估计3DOF相对位姿与焦距。首先,在已知垂直方向的条件下,基于两个仿射对应关系建立约束方程。随后,根据方程组存在非平凡解的特性,可推导出四个方程。这些方程仅涉及两个参数:焦距与相对旋转角度。最后,采用多项式特征值方法求解焦距与相对旋转角度问题。通过合成数据集与真实数据集对所提求解器进行评估,结果表明本求解器性能优于现有最先进方法。