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Adaptive Kalman filtering and smoothing for gravitation tracking in mobile systems

机译:自适应卡尔曼滤波和平滑,用于移动系统中的重力跟踪

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This paper is concerned with inertial-sensor-based tracking of the gravitation direction in mobile devices such as smartphones. Although this tracking problem is a classical one, choosing a good state-space for this problem is not entirely trivial. Even though for many other orientation related tasks a quaternion-based representation tends to work well, for gravitation tracking their use is not always advisable. In this paper we present a convenient linear quaternion-free state-space model for gravitation tracking. We also discuss the efficient implementation of the Kalman filter and smoother for the model. Furthermore, we propose an adaption mechanism for the Kalman filter which is able to filter out shot-noises similarly as has been proposed in context of adaptive and robust Kalman filtering. We compare the proposed approach to other approaches using measurement data collected with a smartphone.
机译:本文涉及在智能手机等移动设备中基于惯性传感器的重力方向跟踪。尽管此跟踪问题是经典问题,但为该问题选择良好的状态空间并非完全无关紧要。即使对于许多其他与定向相关的任务,基于四元数的表示也往往工作良好,但对于重力跟踪,并不总是建议使用它们。在本文中,我们提出了一种方便的用于重力跟踪的线性无四元数状态空间模型。我们还将讨论该模型的Kalman滤波器和平滑器的有效实现。此外,我们提出了一种卡尔曼滤波器的自适应机制,该机制能够像在自适应鲁棒卡尔曼滤波的背景下提出的那样,滤除散粒噪声。我们使用智能手机收集的测量数据将建议的方法与其他方法进行比较。

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