We propose three novel solvers for estimating the relative pose of a multi-camera system from affine correspondences (ACs). A new constraint is derived interpreting the relationship of ACs and the generalized camera model. Using the constraint, we demonstrate efficient solvers for two types of motions assumed. Considering that the cameras undergo planar motion, we propose a minimal solution using a single AC and a solver with two ACs to overcome the degenerate case. Also, we propose a minimal solution using two ACs with known vertical direction, e.g., from an IMU. Since the proposed methods require significantly fewer correspondences than state-of-the-art algorithms, they can be efficiently used within RANSAC for outlier removal and initial motion estimation. The solvers are tested both on synthetic data and on real-world scenes from the KITTI odometry benchmark. It is shown that the accuracy of the estimated poses is superior to the state-of-the-art techniques.
翻译:我们提出三个新的解决方案,以估计一个多镜头系统的相对面貌。一个新的制约因素是解释ACs和通用相机模型之间的关系。我们通过这一制约因素,展示了两种假设动议的有效解决方案。考虑到相机进行规划运动,我们提出一个最小解决方案,使用一个AC和一个两个ACs的解决方案,以克服变质案例。我们还提出一个最小解决方案,使用两个具有已知垂直方向的ACs,如IMU。由于拟议方法需要的通信远远少于最先进的算法,它们可以在RANSAC中高效地用于外部清除和初步运动估计。根据KITTIodology基准对合成数据和现实世界场景进行测试,显示估计配置的准确性高于最新技术。