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首页> 外文期刊>Robotics, IEEE Transactions on >Algorithms for Cooperative Active Localization of Static Targets With Mobile Bearing Sensors Under Communication Constraints
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Algorithms for Cooperative Active Localization of Static Targets With Mobile Bearing Sensors Under Communication Constraints

机译:通信约束下带移动方位传感器的静态目标协同主动定位算法

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We study the problem of actively locating a static target using mobile robots equipped with bearing sensors. The goal is to reduce the uncertainty in the target's location to a value below a given threshold in minimum time. Our cost formulation explicitly models time spent in traveling, as well as taking measurements. In addition, we consider distance-based communication constraints between the robots. We provide the following theoretical results. First, we study the properties of an optimal offline strategy for one or more robots with access to the target's true location. We derive the optimal offline algorithm and bound its cost when considering a single robot or an even number of robots. In other cases, we provide a close approximation. Second, we provide a general method of converting the offline algorithm into an online adaptive algorithm (that does not have access to the target's true location), while preserving near optimality. Using these two results, we present an online strategy proven to locate the target up to a desired uncertainty level at near-optimal cost. In addition to theoretical analysis, we validate the algorithm in simulations and multiple field experiments performed using autonomous surface vehicles carrying radio antennas to localize radio tags.
机译:我们研究了使用配备了方位传感器的移动机器人主动定位静态目标的问题。目的是在最短时间内将目标位置的不确定性降低到低于给定阈值的值。我们的成本公式明确地模拟了旅行和测量所花费的时间。此外,我们考虑了机器人之间基于距离的通信约束。我们提供以下理论结果。首先,我们研究了一个或多个可以访问目标真实位置的机器人的最佳离线策略的属性。当考虑单个机器人或偶数个机器人时,我们得出了最佳的离线算法并限制了其成本。在其他情况下,我们提供近似值。其次,我们提供了一种将离线算法转换为在线自适应算法(无法访问目标的真实位置)的通用方法,同时保持了接近最佳的效果。使用这两个结果,我们提出了一种在线策略,该策略被证明可以以接近最佳的成本将目标定位到所需的不确定性水平。除了理论分析之外,我们还在使用载有无线电天线的自动地面车辆对无线电标签进行定位的模拟和多场实验中验证了该算法。

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