论文标题

根据信息增益,用无人用群监测和映射农作物领域

Monitoring and mapping of crop fields with UAV swarms based on information gain

论文作者

Carbone, Carlos, Albani, Dario, Magistri, Federico, Ognibene, Dimitri, Stachniss, Cyrill, Kootstra, Gert, Nardi, Daniele, Trianni, Vito

论文摘要

可以使用无人驾驶汽车(UAV)进行监测以绘制杂草等特征的绘制特征,这些杂草可以在短时间内覆盖大面积,因为它们的特权视角和运动速度。但是,对高​​分辨率图像进行精确分类(例如,甚至检测到现场最小的杂草)的需求与有限的有效载荷和当前无人机的临时时间对比。因此,它需要几次航班才能统一覆盖大型田地。但是,当特征分布出异质时,必须以相同精度观察整个场的假设,例如出现在田间斑块中的杂草。在这种情况下,仅关注相关领域的自适应方法可以更好地表现,尤其是当同时使用多个无人机时。为了利用群体机器人的方法,我们提出了一种监视和映射策略,该策略根据预期信息增益自适应地选择目标区域,这衡量了由于进一步观察而导致的不确定性降低的可能性。与最佳预先计划的监视方法相比,提出的策略随组规模良好,并导致尺寸较小的映射错误。

Monitoring crop fields to map features like weeds can be efficiently performed with unmanned aerial vehicles (UAVs) that can cover large areas in a short time due to their privileged perspective and motion speed. However, the need for high-resolution images for precise classification of features (e.g., detecting even the smallest weeds in the field) contrasts with the limited payload and ight time of current UAVs. Thus, it requires several flights to cover a large field uniformly. However, the assumption that the whole field must be observed with the same precision is unnecessary when features are heterogeneously distributed, like weeds appearing in patches over the field. In this case, an adaptive approach that focuses only on relevant areas can perform better, especially when multiple UAVs are employed simultaneously. Leveraging on a swarm-robotics approach, we propose a monitoring and mapping strategy that adaptively chooses the target areas based on the expected information gain, which measures the potential for uncertainty reduction due to further observations. The proposed strategy scales well with group size and leads to smaller mapping errors than optimal pre-planned monitoring approaches.

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