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On multi-rate fusion for non-linear sampled-data systems: Application to a 6D tracking system

机译:关于非线性采样数据系统的多速率融合:在6D跟踪系统中的应用

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摘要

Egomotion estimation, e.g. for robot navigation or augmented reality applications, requires the fusion of non-linear sampled-data system with different sensors. An example is to fuse the complimentary characteristics of visual and inertial sensors. Existing approaches either use Kalman filters in conventionally sampled systems or use Particle filters to accommodate the uncertainty of motion models. This paper introduces an approach that models multi-rate non-linear systems to exploit the characteristics of both sensors, assuming synchronicity and periodicity of measurements. The final contribution of this paper is an in-depth analysis and performance comparison of the Extended Kalman filter, the Unscented Kalman filter and three particle filters (Bootstrap, Extended and Unscented). While there is large debate over the pros and cons of these two approaches, this work shows the following results for fusing visual and inertial data in 6 DOF (position and orientation) in a tracking application: the Bootstrap Particle filter gives higher estimation error than Extended and Unscented Particle filters, which give very similar results than Extended and Unscented Kalman filters, but with considerable higher computational burden.
机译:自我估计,例如对于机器人导航或增强现实应用,需要将非线性采样数据系统与不同的传感器融合。一个例子是融合视觉和惯性传感器的互补特性。现有方法要么在常规采样系统中使用卡尔曼滤波器,要么使用粒子滤波器来适应运动模型的不确定性。本文介绍了一种方法,该方法对多速率非线性系统进行建模,以利用两个传感器的特性,并假设测量具有同步性和周期性。本文的最后贡献是对扩展卡尔曼滤波器,无味卡尔曼滤波器和三个粒子滤波器(Bootstrap,Extended和Unscented)进行了深入的分析和性能比较。尽管关于这两种方法的优缺点存在很多争论,但这项工作显示了在跟踪应用程序中以6 DOF(位置和方向)融合视觉和惯性数据的以下结果:自举粒子滤波器比扩展算法具有更高的估计误差和无味粒子滤波器,其结果与扩展和无味卡尔曼滤波器非常相似,但计算量却更高。

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