This work provides a theoretical framework for the pose estimation problem using total least squares for vector observations from landmark features. First, the optimization framework is formulated with observation vectors extracted from point cloud features. Then, error-covariance expressions are derived. The attitude and position solutions obtained via the derived optimization framework are proven to reach the bounds defined by the Cram\'er-Rao lower bound under the small-angle approximation of attitude errors. The measurement data for the simulation of this problem is provided through a series of vector observation scans, and a fully populated observation noise-covariance matrix is assumed as the weight in the cost function to cover the most general case of the sensor uncertainty. Here, previous derivations are expanded for the pose estimation problem to include more generic correlations in the errors than previous cases involving an isotropic noise assumption. The proposed solution is simulated in a Monte-Carlo framework to validate the error-covariance analysis.
翻译:这项工作为根据地标特征对矢量进行观测提供了利用最小方位来估计表面问题的理论框架。 首先, 优化框架是用从点云特征中提取的观测矢量来拟定的。 然后, 得出错误- 共变表达式。 通过衍生优化框架获得的态度和位置解决方案被证明达到了在态度误差的小角近似下较低的界限。 模拟这一问题的测量数据通过一系列矢量观测扫描提供, 并假设成本函数中的重量为覆盖传感器不确定性的最一般情况, 假设人口密集的观测噪声- 共变矩阵, 以覆盖最一般的情况。 在此, 先前的推断是为了涵盖构成估计问题, 以包含比以往涉及异调假设的错误案例更通用的关联。 拟议的解决方案在蒙特卡洛框架中模拟, 以验证错误- coverance 分析 。