An analysis of observability-constrained Kalman Filtering for vision-aided navigation

C. Taylor
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引用次数: 14

Abstract

Significant improvements in the accuracy of navigation state estimation have been previously demonstrated through the fusion of inertial measurement unit (IMU) and visual sensor data in both GPS-denied and GPS-enabled scenarios. Despite this improved navigation state accuracy, several significant hurdles remain before widespread acceptance of vision-aided navigation can be achieved. One significant bottleneck is the lack of accurate information about the performance of the vision-aided navigation algorithms. Many vision-aided navigation algorithms are implemented using some form of the Kalman Filter, thereby returning a covariance estimate that should correspond with the accuracy of the current navigation estimate. Unfortunately, a well known problem with the Kalman Filter is that its covariance estimates are inconsistent, i.e. the Kalman Filter estimates of uncertainty are significantly smaller than the true uncertainty achieved by the Kalman Filter. Recently a set of papers has introduced the concept of “observability-constrained” Kalman filtering that helps solve the consistency problem. In this paper, we apply the observability-constrained Kalman Filter to a vision-aided navigation problem and analyze its results. Significantly more accurate state and uncertainty estimates are achieved using the observability-constrained Kalman Filter. Unfortunately, the it is still not consistent, so a comparison with a batch, bundle adjustment approach is also performed to verify the possibility of consistent uncertainty estimation.
视觉辅助导航的可观测约束卡尔曼滤波分析
在gps拒绝和启用两种情况下,通过融合惯性测量单元(IMU)和视觉传感器数据,已经证明了导航状态估计精度的显著提高。尽管这种方法提高了导航状态的准确性,但在视觉辅助导航被广泛接受之前,仍存在一些重大障碍。一个重要的瓶颈是缺乏关于视觉辅助导航算法性能的准确信息。许多视觉辅助导航算法都是使用某种形式的卡尔曼滤波器来实现的,因此返回的协方差估计应该与当前导航估计的精度相对应。不幸的是,卡尔曼滤波器的一个众所周知的问题是它的协方差估计是不一致的,即卡尔曼滤波器对不确定性的估计明显小于卡尔曼滤波器获得的真实不确定性。最近,一组论文引入了“可观测约束”卡尔曼滤波的概念,有助于解决一致性问题。本文将可观测约束卡尔曼滤波应用于视觉辅助导航问题,并对其结果进行了分析。使用可观测约束卡尔曼滤波器可以获得更精确的状态和不确定性估计。不幸的是,它仍然是不一致的,因此还进行了与批,束平差方法的比较,以验证一致的不确定性估计的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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