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A Robust Mobile Target Localization Method for Cooperative Unmanned Aerial Vehicles Using Sensor Fusion Quality

机译:一种强大的移动目标本地化方法,用于使用传感器融合质量的合作无人驾驶空中车辆

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One of the current unmanned systems research areas at the US Air Force Academy is finding robust methods to locate ground mobile targets using multiple, cooperative unmanned aerial vehicles (UAVs). In our previous work (Plett et al., Lect Notes Control Inf Sci 369:22-44, 2007), we showed an effective method to search, detect, and localize static ground targets. The current focus of our research is to extend the method to handle mobile ground targets. To that end, we introduced a novel concept called Sensor Fusion Quality (SFQ) in Kwon and Pack (2011). In this paper, we adapt and incorporate the SFQ principle to include both static and mobile ground targets in a modified Out-of-Order Sigma Point Kalman Filtering (O~3SPKF) approach (Plett et al., Lect Notes Control Inf Sci 369:22-44, 2007). The proposed method uses augmented covariances of sigma points to compute SFQ values. This approach showed superior performance over those observed when either the SFQ method or the O3SPKF method was used alone. The added benefit of the integrated approach is in the reduction of computational complexity associated with the propagation updates of target state uncertainties. We validate the proposed method using both simulation and flight experiment results.
机译:美国空军学院目前的无人机系统研究领域是找到使用多个合作无人机(无人机)定位地面移动目标的强大方法。在我们以前的工作中(Plett等人,Lect Notes Control Inf SCI 369:22-44,2007),我们展示了一种搜索,检测和本地化静态地面目标的有效方法。目前我们研究的重点是扩展方法处理移动地面目标。为此,我们介绍了一个新颖的概念,称为kwon和pack(2011)中的传感器融合质量(SFQ)。在本文中,我们适应并结合SFQ原理,包括在修改的阶段Σ点卡尔曼滤波(O〜3SPKF)方法中包括静态和移动地面目标(PLett等,章节控制INF SCI 369: 22-44,2007)。所提出的方法使用Sigma点的增强Covarive来计算SFQ值。当单独使用SFQ方法或O3SPKF方法时,这种方法显示出优异的性能。综合方法的增加的好处是减少与目标状态不确定性的传播更新相关的计算复杂性。我们使用模拟和飞行实验结果验证了所提出的方法。

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