We demonstrate how efficient autonomous drone swarms can be in detecting and tracking occluded targets in densely forested areas, such as lost people during search and rescue missions. Exploration and optimization of local viewing conditions, such as occlusion density and target view obliqueness, provide much faster and much more reliable results than previous, blind sampling strategies that are based on pre-defined waypoints. An adapted real-time particle swarm optimization and a new objective function are presented that are able to deal with dynamic and highly random through-foliage conditions. Synthetic aperture sensing is our fundamental sampling principle, and drone swarms are employed to approximate the optical signals of extremely wide and adaptable airborne lenses.
翻译:我们展示了在探测和跟踪密林地区隐蔽目标方面如何高效自主无人机群,例如在搜索和救援任务中丢失的人。探索和优化当地观察条件,如封闭密度和目标视图斜斜度,比以前基于预先确定的路径点的盲点采样战略提供更快和更加可靠的结果。介绍了经过调整的实时粒子群优化和新的客观功能,这些功能能够应对动态和高度随机的利用树叶条件。合成孔径遥感是我们的基本采样原则,而无人机群被用来接近极广且适应性极强的空气透镜的光学信号。