Robust Singular Smoothers for Tracking Using Low-Fidelity Data

Jonathan Jonker, A. Aravkin, J. Burke, G. Pillonetto, Sarah E. Webster
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Abstract

Tracking underwater autonomous platforms is often difficult because of noisy, biased, and discretized input data. Classic filters and smoothers based on standard assumptions of Gaussian white noise break down when presented with any of these challenges. Robust models (such as the Huber loss) and constraints (e.g. maximum velocity) are used to attenuate these issues. Here, we consider robust smoothing with singular covariance, which covers bias and correlated noise, as well as many specific model types, such as those used in navigation. In particular, we show how to combine singular covariance models with robust losses and state-space constraints in a unified framework that can handle very low-fidelity data. A noisy, biased, and discretized navigation dataset from a submerged, low-cost inertial measurement unit (IMU) package, with ultra short baseline (USBL) data for ground truth, provides an opportunity to stress-test the proposed framework with promising results. We show how robust modeling elements improve our ability to analyze the data, and present batch processing results for 10 minutes of data with three different frequencies of available USBL position fixes (gaps of 30 seconds, 1 minute, and 2 minutes). The results suggest that the framework can be extended to real-time tracking using robust windowed estimation.
基于低保真度数据的鲁棒奇异平滑跟踪
由于输入数据的噪声、偏差和离散性,水下自主平台的跟踪往往很困难。当遇到这些挑战时,基于高斯白噪声标准假设的经典滤波器和平滑器就会崩溃。鲁棒模型(如Huber损失)和约束(如最大速度)被用来减弱这些问题。在这里,我们考虑具有奇异协方差的鲁棒平滑,它涵盖了偏差和相关噪声,以及许多特定的模型类型,例如导航中使用的模型。特别是,我们展示了如何将奇异协方差模型与鲁棒损失和状态空间约束结合在一个统一的框架中,可以处理非常低保真度的数据。来自水下低成本惯性测量单元(IMU)封装的噪声、偏置和离散导航数据集,以及超短基线(USBL)地面真值数据,为所提出的框架提供了压力测试的机会,并取得了有希望的结果。我们展示了健壮的建模元素如何提高我们分析数据的能力,并展示了具有三种不同可用USBL位置固定频率(间隔为30秒、1分钟和2分钟)的10分钟数据的批处理结果。结果表明,该框架可以通过鲁棒窗估计扩展到实时跟踪。
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