In the last years, unmanned aerial vehicles are becoming a reality in the context of precision agriculture, mainly for monitoring, patrolling and remote sensing tasks, but also for 3D map reconstruction. In this paper, we present an innovative approach where a fleet of unmanned aerial vehicles is exploited to perform remote sensing tasks over an apple orchard for reconstructing a 3D map of the field, formulating the covering control problem to combine the position of a monitoring target and the viewing angle. Moreover, the objective function of the controller is defined by an importance index, which has been computed from a multi-spectral map of the field, obtained by a preliminary flight, using a semantic interpretation scheme based on a convolutional neural network. This objective function is then updated according to the history of the past coverage states, thus allowing the drones to take situation-adaptive actions. The effectiveness of the proposed covering control strategy has been validated through simulations on a Robot Operating System.
翻译:在过去几年中,无人驾驶飞行器在精确农业的背景下正在成为现实,主要用于监测、巡逻和遥感任务,但也用于3D地图重建。在本文件中,我们提出了一个创新办法,即利用一支无人驾驶飞行器的车队在苹果果园上执行遥感任务,以重建3D实地地图,制定覆盖控制问题,将监测目标的位置和观察角度结合起来。此外,控制器的客观功能由重要指数确定,该指数是从实地多光谱地图中计算出来的,初步飞行是利用以动态神经网络为基础的语义解释计划获得的,然后根据过去覆盖国家的历史更新这一目标功能,从而使无人驾驶飞机能够采取适应形势的行动。通过机器人操作系统的模拟验证了拟议的控制战略的有效性。