Where's WALL-E? A Comparison of the Extended Kalman Filter and Hybrid Inference for Pose Estimation in MAVs

R. Milroy
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Abstract

Pose estimation is a core competence for cyber-physical systems and is all the more important where there is any element of autonomy. In the context of Micro Air Vehicles (MAVs) this task is more challenging due to weight and cost restrictions. These restrictions dictate that MAVs usually have noisy sensors and limited computational capacity. There are many different approaches to solving this problem but the standard approach is to use the Kalman Filter (KF) [1], or it's nonlinear variant the Extended Kalman Filter (EKF) [2], in order to fuse sensor data and provide optimal estimates of state. While the KF is an optimal estimator of linear systems given some assumptions, most systems are non-linear so the EKF is used. In either case the estimates rely on assumptions that may not always hold. This allows room for improvement. This paper implements the newly proposed technique of Hybrid Inference (HI) [3] on a model of an MAV simulated in Gazebo [4] and explores its performance as compared to the EKF which is used as the standard. HI is a framework for combining graphical models, like the KF, with inverse models which are learned with a Recurrent Message Passing Neural Network (MPNN) [5] [6]. This paper evaluates the technique in a more challenging domain than has previously been implemented. It explores the challenges of implementing the technique, analyses its computational performance and discusses its suitability for use at this time with a strong practical focus. The main findings are that it is too challenging to implement correctly to take full advantage of its proposed benefits. And that it is too computationally inefficient in its current form for it to be suitable for use in real time systems with current technology.
瓦力在哪儿?扩展卡尔曼滤波与混合推理在无人机姿态估计中的比较
姿态估计是网络物理系统的核心能力,在存在任何自主元素的情况下尤为重要。在微型飞行器(MAVs)的背景下,由于重量和成本的限制,这项任务更具挑战性。这些限制决定了MAVs通常具有噪声传感器和有限的计算能力。有许多不同的方法来解决这个问题,但标准的方法是使用卡尔曼滤波器(KF)[1],或者它的非线性变体扩展卡尔曼滤波器(EKF)[2],以融合传感器数据并提供最优的状态估计。虽然KF是给定某些假设的线性系统的最优估计,但大多数系统是非线性的,因此使用EKF。在任何一种情况下,估计都依赖于可能并不总是成立的假设。这为改进留出了空间。本文在Gazebo[4]仿真的MAV模型上实现了新提出的混合推理(Hybrid Inference, HI)技术[3],并对其性能与作为标准的EKF进行了比较。HI是一个将图形模型(如KF)与逆模型(通过循环消息传递神经网络(MPNN)学习)相结合的框架[5][6]。本文在一个比以前实现的更具挑战性的领域中评估该技术。它探讨了实现该技术的挑战,分析了它的计算性能,并讨论了它在当前使用的适用性,并具有很强的实用性。主要发现是,正确实施它太具有挑战性,无法充分利用其提议的好处。而且它目前的形式计算效率太低,不适合在现有技术的实时系统中使用。
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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