In the last few years, robotic technology has been increasingly employed in agriculture to develop intelligent vehicles that can improve productivity and competitiveness. Accurate and robust environmental perception is a critical requirement to address unsolved issues including safe interaction with field workers and animals, obstacle detection in controlled traffic applications, crop row guidance, surveying for variable rate applications, and situation awareness, in general, towards increased process automation. Given the variety of conditions thatmay be encountered in the field, no single sensor exists that can guarantee reliable results in every scenario. The development of a multi-sensory perception systemto increase the ambient awareness of an agricultural vehicle operating in crop fields is the objective of the Ambient Awareness for Autonomous Agricultural Vehicles (QUAD-AV) project. Different onboard sensor technologies, namely stereovision, LIDAR, radar, and thermography, are considered. Novel methods for their combination are proposed to automatically detect obstacles and discern traversable from non-traversable areas. Experimental results, obtained in agricultural contexts, are presented showing the effectiveness of the proposed methods.
翻译:过去几年来,农业越来越多地采用机器人技术开发能提高生产力和竞争力的智能车辆,准确和稳健的环境观念是解决尚未解决的问题的关键要求,这些问题包括:与实地工人和动物的安全互动、在控制交通应用中发现障碍、作物排制指导、调查可变速率应用以及一般情况下对提高过程自动化的认识。鉴于实地可能遇到的各种条件,没有单一传感器能够保证每个情景的可靠结果。发展多感知系统以提高在农田作业的农用车辆的环境意识是农业自主车辆(QUAD-AV)项目的目标。考虑的是机载传感器技术上的不同技术,即立体、LIDAR、雷达和热测技术。提议采用创新的组合方法,以自动发现障碍,并辨别从非贸易性地区可探测到的可探测性结果。在农业环境中取得的实验结果显示了拟议方法的有效性。