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Bayesian Hidden Markov Models for UAV-Enabled Target Localization on Road Networks with Soft-Hard Data

机译:贝叶斯隐马尔可夫模型用于具有软硬数据的道路网络上支持无人机的目标定位

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This work addresses the problem of localizing a mobile intruder on a road network with a small UAV through fusion of event-based 'hard data' collected from a network of unattended ground sensors (UGS) and 'soft data' provided by human dismount operators (HDOs) whose statistical characteristics may be unknown. Current approaches to road network intruder detection/tracking have two key limitations: predictions become computationally expensive with highly uncertain target motions and sparse data, and they cannot easily accommodate fusion with uncertain sensor models. This work shows that these issues can be addressed in a practical and theoretically sound way using hidden Markov models (HMMs) within a comprehensive Bayesian framework. A formal procedure is derived for automatically generating sparse Markov chain approximations for target state dynamics based on standard motion assumptions. This leads to efficient online implementation via fast sparse matrix operations for non-Gaussian localization aboard small UAV platforms, and also leads to useful statistical insights about stochastic target dynamics that could be exploited by autonomous UAV guidance and control laws. The computational efficiency of the HMM can be leveraged in Rao-Blackwellized sampling schemes to address the problem of simultaneously fusing and characterizing uncertain HDO soft sensor data via hierarchical Bayesian estimation. Simulation results are provided to demonstrate the proposed approach.
机译:这项工作解决了通过融合从无人值守地面传感器(UGS)网络收集的基于事件的“硬数据”和下车操作员提供的“软数据”将移动入侵者定位在具有小型无人机的道路网络上的问题( HDO),其统计特征可能未知。当前的道路网络入侵者检测/跟踪方法有两个主要局限性:由于目标运动和数据稀疏,预测变得计算量大,并且无法轻松地与不确定的传感器模型融合。这项工作表明,可以使用贝叶斯综合框架内的隐马尔可夫模型(HMM),以实用且理论上合理的方式解决这些问题。导出了一种正式过程,用于基于标准运动假设为目标状态动态自动生成稀疏马尔可夫链近似。这将导致针对小型UAV平台上的非高斯定位,通过快速稀疏矩阵运算实现有效的在线实施,并且还可以获得有关随机目标动态的有用统计见解,而自主目标UAV制导和控制法则可以利用这些统计见解。可以在Rao-Blackwellized采样方案中利用HMM的计算效率,以解决通过层次贝叶斯估计同时融合和表征不确定的HDO软传感器数据的问题。仿真结果表明了该方法的有效性。

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