基于并行网格的信念融合方法-实时协同非高斯估计

T. Furukawa, Xianqiao Tong, G. Dissanayake, H. Durrant-Whyte
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引用次数: 0

摘要

提出了一种基于并行网格的实时协同贝叶斯估计方法和信念融合方法。基于网格的递归贝叶斯估计(RBE)方法即使在没有检测事件的情况下也能有效地保持目标的信念,但其预测和校正过程以及协同估计中的融合过程需要大量的计算量。为了实现实时估计,本文提出的信念融合在RBE环外进行了信念融合。整个基于网格的方法的并行化和信念融合进一步加速了RBE,使得即使在高动态环境下也可以实现实时估计。数值算例首先通过参数研究证明了该方法的有效性。将该方法应用于自主无人地面车辆的协同搜索,验证了其实时性。
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Parallel grid-based method and belief fusion — Real-time cooperative non-Gaussian estimation
This paper presents a parallel grid-based method and belief fusion for real-time cooperative Bayesian estimation. The grid-based recursive Bayesian estimation (RBE) method effectively maintains the belief of objects even with no detection event but requires large computation for its prediction and correction processes as well as fusion process in cooperative estimation. In order for real-time estimation, the belief fusion proposed in the paper carries out the fusion of belief outside the RBE loop. The parallelization of the entire grid-based method and belief fusion further accelerates the RBE so that real-time estimation is possible even in highly dynamical environments. Numerical examples have first demonstrated the validity of the proposed approach through parametric studies. The proposed approach was then applied to the cooperative search by autonomous unmanned ground vehicles (UGVs), and its real-time capability has been demonstrated.
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