Precision agriculture is a fast-growing field that aims at introducing affordable and effective automation into agricultural processes. Nowadays, algorithmic solutions for navigation in vineyards require expensive sensors and high computational workloads that preclude large-scale applicability of autonomous robotic platforms in real business case scenarios. From this perspective, our novel proposed control leverages the latest advancement in machine perception and edge AI techniques to achieve highly affordable and reliable navigation inside vineyard rows with low computational and power consumption. Indeed, using a custom-trained segmentation network and a low-range RGB-D camera, we are able to take advantage of the semantic information of the environment to produce smooth trajectories and stable control in different vineyards scenarios. Moreover, the segmentation maps generated by the control algorithm itself could be directly exploited as filters for a vegetative assessment of the crop status. Extensive experimentations and evaluations against real-world data and simulated environments demonstrated the effectiveness and intrinsic robustness of our methodology.
翻译:精密农业是一个快速增长的领域,旨在将负担得起和有效的自动化引入农业流程。如今,葡萄园导航的算法解决方案需要昂贵的传感器和高计算工作量,从而无法大规模适用实际商业情况情景下的自主机器人平台。从这个角度出发,我们提出的新颖的控制措施利用机器认知和边缘人工智能技术的最新进展,在计算和功率消耗低的葡萄园内实现高度负担得起和可靠的导航。事实上,我们利用经过定制培训的分割网络和低频 RGB-D 相机,能够利用环境的语义信息来产生滑动轨迹和稳定控制不同葡萄园情景。此外,控制算法本身产生的分解图可以直接用作对作物状况进行植被评估的过滤器。针对真实世界数据和模拟环境的广泛实验和评价证明了我们的方法的有效性和内在的稳健性。