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INERTIAL AND VISION HEAD TRACKER SENSOR FUSION USING A PARTICLE FILTER FOR AUGMENTED REALITY SYSTEMS

机译:惯性和视觉头跟踪器传感器融合,用于增强现实系统的粒子过滤器

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A basic problem with Augmented Reality systems using Head-Mounted Displays (HMDs) is the perceived latency or lag. This delay corresponds to the elapsed time between the moment when the user's head moves and the moment of displaying the corresponding virtual objects in the HMD. One way to eliminate or reduce the effect of system delays is to predict future head locations. Actually, the most used filter to predict head motion is the extended Kalman filter (EKF). However, when dealing with non linear models (like head motion) in state equation and measurement relation and a non Gaussian noise assumption, the EKF method may lead to a non optimal solution. In this paper, we propose to use sequential Monte Carlo methods, also known as particle filters to predict head motion. Theses methods provide general solutions to many problems with any non linearities or distributions. Our purpose is to compare, both in simulation and in real task, the results obtained by particle filter with those given by EKF.
机译:使用头戴式显示器(HMDS)的增强现实系统的基本问题是感知延迟或滞后。该延迟对应于用户头部移动的时刻与在HMD中显示相应的虚拟对象的时刻之间的经过时间。消除或降低系统延迟效果的一种方法是预测未来的头部位置。实际上,最常用的过滤器预测头部运动是扩展卡尔曼滤波器(EKF)。然而,当在状态方程和测量关系和非高斯噪声假设中处理非线性模型(如头部运动)时,EKF方法可能导致非最佳解决方案。在本文中,我们建议使用序贯蒙特卡罗方法,也称为粒子过滤器以预测头部运动。这些方法提供了任何非线性或分布的许多问题的一般解决方案。我们的目的是在模拟和实际任务中进行比较,通过粒子过滤器获得的结果与EKF给出的结果。

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