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Minimum Time Search in Uncertain Dynamic Domains with Complex Sensorial Platforms

机译:复杂感官平台在不确定动态域中的最短时间搜索

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摘要

The minimum time search in uncertain domains is a searching task, which appears in real world problems such as natural disasters and sea rescue operations, where a target has to be found, as soon as possible, by a set of sensor-equipped searchers. The automation of this task, where the time to detect the target is critical, can be achieved by new probabilistic techniques that directly minimize the Expected Time (ET) to detect a dynamic target using the observation probability models and actual observations collected by the sensors on board the searchers. The selected technique, described in algorithmic form in this paper for completeness, has only been previously partially tested with an ideal binary detection model, in spite of being designed to deal with complex non-linearon-differential sensorial models. This paper covers the gap, testing its performance and applicability over different searching tasks with searchers equipped with different complex sensors. The sensorial models under test vary from stepped detection probabilities to continuous/discontinuous differentiableon-differentiable detection probabilities dependent on distance, orientation, and structured maps. The analysis of the simulated results of several static and dynamic scenarios performed in this paper validates the applicability of the technique with different types of sensor models.
机译:不确定区域中的最短时间搜索是一项搜索任务,它出现在诸如自然灾害和海上救援行动等现实世界中的问题中,在这些问题中,必须由一组配备传感器的搜索器尽快找到目标。通过新的概率技术可以实现这项任务的自动化,在这种情况下,目标的检测时间非常关键,该技术可以使用观测概率模型和传感器收集的实际观测值直接最小化检测动态目标的预期时间(ET)。登上搜寻者。尽管已被设计为处理复杂的非线性/非差分感官模型,但在本文中以算法形式描述的所选技术为完整起见,之前仅通过理想的二进制检测模型进行了部分测试。本文填补了这一空白,并通过配备不同复杂传感器的搜索器测试了其在不同搜索任务下的性能和适用性。受测的感官模型取决于距离,方向和结构图,从阶梯式检测概率到连续/不连续的可区分/不可区分的检测概率不等。本文对几种静态和动态场景的仿真结果进行的分析验证了该技术在不同类型的传感器模型中的适用性。

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