The development of precision agriculture has gradually introduced automation in the agricultural process to support and rationalize all the activities related to field management. In particular, service robotics plays a predominant role in this evolution by deploying autonomous agents able to navigate in fields while executing different tasks without the need for human intervention, such as monitoring, spraying and harvesting. In this context, global path planning is the first necessary step for every robotic mission and ensures that the navigation is performed efficiently and with complete field coverage. In this paper, we propose a learning-based approach to tackle waypoint generation for planning a navigation path for row-based crops, starting from a top-view map of the region-of-interest. We present a novel methodology for waypoint clustering based on a contrastive loss, able to project the points to a separable latent space. The proposed deep neural network can simultaneously predict the waypoint position and cluster assignment with two specialized heads in a single forward pass. The extensive experimentation on simulated and real-world images demonstrates that the proposed approach effectively solves the waypoint generation problem for both straight and curved row-based crops, overcoming the limitations of previous state-of-the-art methodologies.
翻译:精准农业的发展逐渐引入了农业过程的自动化,以支持与实地管理有关的所有活动并使其合理化;特别是,服务机器人在这种演变中发挥着主要作用,它部署能够在田间航行的自主代理,同时执行各种任务,而不需要人类的干预,例如监测、喷洒和收获;在这方面,全球路径规划是每个机器人飞行任务的第一个必要步骤,确保以高效率和完整的实地覆盖方式进行导航;在本文件中,我们提议采用基于学习的办法,从区域利益最上视图开始,处理路段的生成,以规划行本作物的导航路径;我们提出了基于对比性损失的路径点组合新方法,以便能够预测分辨出一个分离的潜在空间的点;拟议的深神经网络可以同时预测路点位置和分组任务,在单一的前沿通道上有两个专业头;对模拟和真实世界图像的广泛实验表明,拟议的方法有效地解决了直线作物和弯曲作物的路径生成问题,克服了以前的状态方法的局限性。