Learned Uncertainty Calibration for Visual Inertial Localization

Stephanie Tsuei, Stefano Soatto, P. Tabuada, Mark B. Milam
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引用次数: 1

Abstract

The widely-used Extended Kalman Filter (EKF) provides a straightforward recipe to estimate the mean and covariance of the state given all past measurements in a causal and recursive fashion. For a wide variety of applications, the EKF is known to produce accurate estimates of the mean and typically inaccurate estimates of the covariance. For applications in visual inertial localization, we show that inaccuracies in the covariance estimates are systematic, i.e. it is possible to learn a nonlinear map from the empirical ground truth to the estimated one. This is demonstrated on both a standard EKF in simulation and a Visual Inertial Odometry system on real-world data.
视觉惯性定位的学习不确定度标定
广泛使用的扩展卡尔曼滤波(EKF)提供了一种简单的方法,以因果递归的方式估计给定所有过去测量的状态的均值和协方差。对于各种各样的应用,已知EKF可以产生准确的均值估计和通常不准确的协方差估计。对于视觉惯性定位的应用,我们表明协方差估计的不准确性是系统性的,即有可能从经验真值到估计真值学习非线性映射。这在模拟的标准EKF和真实世界数据的视觉惯性里程计系统上进行了演示。
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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