In this paper, we address the problem of adaptive path planning for accurate semantic segmentation of terrain using unmanned aerial vehicles (UAVs). The usage of UAVs for terrain monitoring and remote sensing is rapidly gaining momentum due to their high mobility, low cost, and flexible deployment. However, a key challenge is planning missions to maximize the value of acquired data in large environments given flight time limitations. To address this, we propose an online planning algorithm which adapts the UAV paths to obtain high-resolution semantic segmentations necessary in areas on the terrain with fine details as they are detected in incoming images. This enables us to perform close inspections at low altitudes only where required, without wasting energy on exhaustive mapping at maximum resolution. A key feature of our approach is a new accuracy model for deep learning-based architectures that captures the relationship between UAV altitude and semantic segmentation accuracy. We evaluate our approach on the application of crop/weed segmentation in precision agriculture using real-world field data.
翻译:在本文中,我们讨论了利用无人驾驶航空器(无人驾驶航空器)对地形进行准确的语义分解的适应性路径规划问题。无人驾驶航空器用于地形监测和遥感,由于机动性高、成本低、部署灵活,正在迅速增加势头。然而,鉴于飞行时间有限,一个关键挑战是规划特派团在大型环境中最大限度地增加所获得的数据的价值。为解决这一问题,我们提议了一种在线规划算法,使无人驾驶航空器路径适应在地形地区获得必要的高分辨率语义分解,并附上在收到的图像中检测到的精细细节。这使我们能够仅在必要时在低空进行密切检查,而不会将能源浪费在以最高分辨率进行详尽的绘图上。我们方法的一个关键特点是为深层学习结构提供一个新的准确模型,以捕捉无人驾驶飞行器高度与语义分解的准确性之间的关系。我们用真实世界实地数据评估了我们在精确农业中应用作物/湿分解的方法。