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Computational Methods for Task-Directed Sensor Data Fusion and Sensor Planning

机译:任务导向传感器数据融合和传感器规划的计算方法

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摘要

In this paper, we consider the problem of task-directed information gathering. We first develop a decision-theoretic model of task-directed sensing in which sensors are modeled as noise-contaminated, uncertain measurement systems and sensing tasks are modeled by a transformation describing the type of information required by the task, a utility function describing sensitivity to error, and a cost function describing time or resource constraints on the system.This description allows us to develop a standard conditional Bayes decision-making model where the value of information, or payoff, of an estimate is defined as the average utility (the expected value of some function of decision or estimation error) relative to the current probability distribution and the best estimate is that which maximizes payoff. The optimal sensor viewing strategy is that which maximizes the net payoff (decision value minus observation costs) of the final estimate. The advantage of this solution is generality--it does not assume a particular sensing modality or sensing task. However, solutions to this updating problem do not exist in closed-form. This, motivates the development of an approximation to the optimal solution based on a grid-based implementation of Bayes\u27 theorem.We describe this algorithm, analyze its error properties, and indicate how it can be made robust to errors in the description of sensors and discrepancies between geometric models and sensed objects. We also present the results of this fusion technique applied to several different information gathering tasks in simulated situations and in a distributed sensing system we have constructed.
机译:在本文中,我们考虑了任务导向的信息收集问题。我们首先建立任务导向感测的决策理论模型,其中将传感器建模为被噪声污染,不确定的测量系统,并通过描述任务所需信息类型的转换对传感任务进行建模,该效用函数描述对任务的敏感性错误,以及描述系统时间或资源约束的成本函数。此描述使我们能够开发标准条件贝叶斯决策模型,其中将估计的信息价值或收益定义为平均效用(预期相对于当前概率分布的决策或估计误差的某些函数的值),最佳估计是使收益最大化的估计。最佳的传感器查看策略是最大化最终估计的净收益(决策值减去观察成本)的策略。该解决方案的优点是通用性-它不假定特定的传感方式或传感任务。但是,此更新问题的解决方案不存在封闭形式。基于贝叶斯定理的基于网格的实现,这激励了对最优解的近似开发,我们描述了该算法,分析了其误差特性,并指出了如何使其在传感器描述中对误差具有鲁棒性以及几何模型和感测对象之间的差异。我们还介绍了这种融合技术的结果,该融合技术在模拟情况下以及在已构建的分布式传感系统中应用于几种不同的信息收集任务。

著录项

  • 作者

    Hager, Greg; Mintz, Max L;

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  • 年度 1991
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