Utilizing autonomous drones or unmanned aerial vehicles (UAVs) has shown great advantages over preceding methods in support of urgent scenarios such as search and rescue (SAR) and wildfire detection. In these operations, search efficiency in terms of the amount of time spent to find the target is crucial since with the passing of time the survivability of the missing person decreases or wildfire management becomes more difficult with disastrous consequences. In this work, it is considered a scenario where a drone is intended to search and detect a missing person (e.g., a hiker or a mountaineer) or a potential fire spot in a given area. In order to obtain the shortest path to the target, a general framework is provided to model the problem of target detection when the target's location is probabilistically known. To this end, two algorithms are proposed: Path planning and target detection. The path planning algorithm is based on Bayesian inference and the target detection is accomplished by means of a residual neural network (ResNet) trained on the image dataset captured by the drone as well as existing pictures and datasets on the web. Through simulation and experiment, the proposed path planning algorithm is compared with two benchmark algorithms. It is shown that the proposed algorithm significantly decreases the average time of the mission.
翻译:利用自主无人驾驶飞机或无人驾驶航空器(无人驾驶航空器)在支持搜索和救援(搜索救援)和野火探测等紧急情形方面比以往方法有极大优势;在这些行动中,在寻找目标所花费的时间方面,搜索效率至关重要,因为随着时间的流逝,失踪人员的存活能力下降或野火管理变得更加困难,从而产生灾难性后果;在这项工作中,无人驾驶飞机打算搜索和探测某个特定地区的人(如徒步者或登山者)或潜在火点,这是一种情况,为了获得最短的目标路径,在目标位置为人所共知的情况下,提供一个一般框架,以模拟目标探测问题;为此,提出了两种算法:路径规划和目标探测;路径规划算法以巴伊斯的推断为基础,目标探测是通过对无人驾驶飞机所捕捉的图像数据集以及现有图片和数据集进行培训的残余神经网络(ResNet)完成的。通过模拟和实验,将拟议路径算法与拟议的平均算法进行比较。