一种快速的协方差估计算法

William Vega-Brown, A. Bachrach, A. Bry, Jonathan Kelly, N. Roy
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引用次数: 29

摘要

我们提出了CELLO(协方差估计和通过似然优化学习),这是一种基于任何可用信息特征预测测量协方差的算法。该算法为传统的固定协方差高斯测量模型提供了一种原则性的扩展方法,旨在提高在线状态估计的准确性和可靠性。我们表明,在实验中,CELLO学习预测测量协方差,这些协方差与通过手动注释传感器制度获得的经验协方差一致。我们还表明,在滤波过程中使用学习到的协方差对整体状态估计提供了实质性的定量改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CELLO: A fast algorithm for Covariance Estimation
We present CELLO (Covariance Estimation and Learning through Likelihood Optimization), an algorithm for predicting the covariances of measurements based on any available informative features. This algorithm is intended to improve the accuracy and reliability of on-line state estimation by providing a principled way to extend the conventional fixed-covariance Gaussian measurement model. We show that in experiments, CELLO learns to predict measurement covariances that agree with empirical covariances obtained by manually annotating sensor regimes. We also show that using the learned covariances during filtering provides substantial quantitative improvement to the overall state estimate.
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