首页> 外文会议>Conference on Image Reconstruction from Incomplete Data II; Jul 8-9, 2002; Seattle, Washington, USA >Continuous and Discrete Space Particle Filters for Predictions in Acoustic Positioning
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Continuous and Discrete Space Particle Filters for Predictions in Acoustic Positioning

机译:连续和离散空间粒子滤波器,用于声学定位预测

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Predicting the future state of a random dynamic signal based on corrupted, distorted, and partial observations is vital for proper real-time control of a system that includes time delay. Motivated by problems from Acoustic Positioning Research Inc., we consider the continual automated illumination of an object moving within a bounded domain, which requires object location prediction due to inherent mechanical and physical time lags associated with robotic lighting. Quality computational predictions demand high fidelity models for the coupled moving object signal and observation equipment pair. In our current problem, the signal represents the vector position, orientation, and velocity of a stage performer. Acoustic observations are formed by timing ultrasonic waves traveling from four perimeter speakers to a microphone attached to the performer. The goal is to schedule lighting movements that are coordinated with the performer by anticipating his/her future position based upon these observations using filtering theory. Particle system based methods have experienced rapid development and have become an essential technique of contemporary filtering strategies. Hitherto, researchers have largely focused on continuous state particle filters, ranging from traditional weighted particle filters to adaptive refining particle filters, readily able to perform path-space estimation and prediction. Herein, we compare the performance of a state-of-the-art refining particle filter to that of a novel discrete-space particle filter on the acoustic positioning problem. By discrete space particle filter we mean a Markov chain that counts particles in discretized cells of the signal state space in order to form an approximated unnormalized distribution of the signal state. For both filters mentioned above, we will examine issues like the mean time to localize a signal, the fidelity of filter estimates at various signal to noise ratios, computational costs, and the effect of signal fading; furthermore, we will provide visual demonstrations of filter performance.
机译:基于损坏,失真和部分观测值来预测随机动态信号的未来状态,对于正确地控制包括时间延迟的系统至关重要。受声学定位研究公司(Acoustic Positioning Research Inc.)的问题启发,我们考虑对在有界区域内移动的对象进行连续自动照明,由于与机器人照明相关的固有机械和物理时滞,因此需要对对象位置进行预测。质量计算预测要求对耦合的运动物体信号和观察设备对使用高保真模型。在我们当前的问题中,信号代表舞台表演者的矢量位置,方向和速度。通过定时从四个外围扬声器传播到与表演者相连的麦克风的超声波来形成声音。目标是通过使用过滤理论基于这些观察来预测表演者的未来位置,从而安排与表演者协调的照明运动。基于粒子系统的方法经历了快速发展,并已成为现代过滤策略的基本技术。迄今为止,研究人员一直将重点放在连续状态粒子滤波器上,从传统的加权粒子滤波器到自适应细化粒子滤波器,可以轻松执行路径空间估计和预测。在本文中,我们在声学定位问题上比较了最新的精制粒子滤波器和新型离散空间粒子滤波器的性能。离散空间粒子滤波器是指对信号状态空间的离散化单元中的粒子进行计数的马尔可夫链,以形成信号状态的近似非标准化分布。对于上述两个滤波器,我们将研究诸如定位信号的平均时间,各种信噪比下的滤波器估计的保真度,计算成本以及信号衰落的影响等问题。此外,我们将提供过滤器性能的视觉演示。

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