在无人机辅助失踪人员搜索中利用心理特征分析优化路径规划

Jan-Hendrik Ewers, David Anderson, Douglas Thomson
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引用次数: 0

摘要

搜救行动都具有时间敏感性,在搜寻儿童或患有痴呆症的老人等易受伤害的失踪人员时尤其如此。最近,苏格兰警察局空中支援小组开始部署无人机协助失踪人员搜索,并取得了成功,不过搜索效果取决于无人机操作员的专业知识。本文比较了几种规划搜索路径的算法,以确定哪种方法在最短时间内找到失踪人员的概率最高。除此以外,还探讨了如何利用失踪者的先验心理特征信息来绘制搜索区域内可能出现的位置概率图。然后将该地图用于非线性优化,以确定给定搜索区域和目标特征的最佳飞行路径。比较了两种优化解算器:遗传算法和粒子群优化。最后,使用最有效的算法创建了一个真实地点的覆盖路径,苏格兰警察空中支援部队为此完成了多次试飞。结果发现,根据预测的走失者意图生成的飞行路径在统计上优于警方专家操作员的飞行路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimal path planning using psychological profiling in drone-assisted missing person search

Optimal path planning using psychological profiling in drone-assisted missing person search

Search and rescue operations are all time-sensitive and this is especially true when searching for a vulnerable missing person, such as a child or elderly person suffering dementia. Recently, Police Scotland Air Support Unit has begun the deployment of drones to assist in missing person searches with success, although the efficacy of the search relies upon the expertise of the drone operator. In this paper, several algorithms for planning the search path are compared to determine which approach has the highest probability of finding the missing person in the shortest time. In addition to this, the use of á priori psychological profile information of the subject to create a probability map of likely locations within the search area was explored. This map is then used within a nonlinear optimization to determine the optimal flight path for a given search area and subject profile. Two optimization solvers were compared; genetic algorithms, and particle swarm optimization. Finally, the most effective algorithm was used to create a coverage path for a real-life location, for which Police Scotland Air Support Unit completed multiple test flights. The generated flight paths based on the predicted intent of the lost person were found to perform statistically better than those of the expert police operators.

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