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Maximum Likelihood Identification of Inertial Sensor Noise Model Parameters

机译:惯性传感器噪声模型参数的最大似然识别

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摘要

Accurate visual-inertial localization and mapping systems require accurate calibration and good sensor error models. To this end, we present a simple offline method to automatically determine the parameters of inertial sensor noise models. The proposed methodology identifies noise processes across a large range of strength and time-scales, for example, weak gyroscope bias fluctuations buried in broadband noise. This is accomplished with a classical maximum likelihood estimator, based on the integrated process (i.e., the angle, velocity, or position), rather than on the angular rate or acceleration as is standard in the literature. This trivial modification allows us to capture noise processes according to their effect on the integrated process, irrespective of their contribution to rate or acceleration noise. The cause of the noise is not discussed in this article. The method is tested on different classes of sensors by automatically identifying the parameters of a standard inertial sensor noise model. The results are analyzed qualitatively by comparing the model’s Allan variance to the Allan variance computed directly from sensor data. A simulation that resembles one of the devices under test facilitates a quantitative analysis of the proposed estimator. Comparison with a competing, state-of-the-art method shows the advantages of the algorithm.
机译:准确的视觉惯性定位和绘图系统需要准确的校准和良好的传感器误差模型。为此,我们提出了一种简单的离线方法来自动确定惯性传感器噪声模型的参数。所提出的方法论可以识别各种强度和时标范围内的噪声过程,例如,埋在宽带噪声中的微弱的陀螺仪偏置波动。这是通过经典的最大似然估计器完成的,该估计器基于积分过程(即角度,速度或位置),而不是文献中标准的角速率或加速度。这种微不足道的修改使我们能够根据噪声过程对集成过程的影响来捕获噪声过程,而不管它们对速率或加速度噪声的贡献如何。本文不讨论噪声的原因。通过自动识别标准惯性传感器噪声模型的参数,在不同类别的传感器上测试了该方法。通过将模型的Allan方差与直接根据传感器数据计算得出的Allan方差进行比较,对结果进行定性分析。类似于被测设备之一的仿真有助于对拟议的估算器进行定量分析。与同类竞争方法的比较显示了该算法的优势。

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