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AN INTEGRATED LINEAR TECHNIQUE FOR POSE ESTIMATION FROM DIFFERENT GEOMETRIC FEATURES

机译:用于从不同几何特征进行姿势估计的集成线性技术

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Existing linear solutions for the pose estimation (or exterior orientation) problem suffer from a lack of robustness and accuracy partially due to the fact that the majority of the methods utilize only one type of geometric entity and their frameworks do not allow simultaneous use of different types of features. Furthermore, the orthonormality constraints are weakly enforced or not enforced at all. We have developed a new analytic linear least-squares framework for determining pose from multiple types of geometric features. The technique utilizes correspondences between points, between lines and between ellipse-circle pairs. The redundancy provided by different geometric features improves the robustness and accuracy of the least-squares solution. A novel way of approximately imposing orthonormality constraints on the sought rotation matrix within the linear framework is presented. Results from experimental evaluation of the new technique using both synthetic data and real images reveal its improved robustness and accuracy over existing direct methods.
机译:现有的用于姿势估计(或外部方位)问题的线性解决方案缺少健壮性和准确性,部分原因是大多数方法仅利用一种类型的几何实体,并且其框架不允许同时使用不同类型的几何实体功能。此外,正交规范约束被弱执行或根本不被执行。我们已经开发了一种新的分析线性最小二乘法框架,用于从多种类型的几何特征中确定姿态。该技术利用点之间,线之间以及椭圆-圆对之间的对应关系。不同几何特征提供的冗余提高了最小二乘解的鲁棒性和准确性。提出了一种将线性正交约束强加于线性框架内寻求的旋转矩阵的新方法。使用合成数据和真实图像对新技术进行实验评估的结果表明,与现有直接方法相比,该技术具有更高的鲁棒性和准确性。

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