Pappu Kumar Yadav , J. Alex Thomasson , Stephen W. Searcy , Robert G. Hardin , Ulisses Braga-Neto , Sorin C. Popescu , Daniel E. Martin , Roberto Rodriguez , Karem Meza , Juan Enciso , Jorge Solórzano Diaz , Tianyi Wang
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引用次数: 0
Abstract
The feral or volunteer cotton (VC) plants when reach the pinhead squaring phase (5–6 leaf stage) can act as hosts for the boll weevil (Anthonomus grandis L.) pests. The Texas Boll Weevil Eradication Program (TBWEP) employs people to locate and eliminate VC plants growing by the side of roads or fields with rotation crops but the ones growing in the middle of fields remain undetected. In this paper, we demonstrate the application of computer vision (CV) algorithm based on You Only Look Once version 5 (YOLOv5) for detecting VC plants growing in the middle of corn fields at three different growth stages (V3, V6 and VT) using unmanned aircraft systems (UAS) remote sensing imagery. All the four variants of YOLOv5 (s, m, l, and x) were used and their performances were compared based on classification accuracy, mean average precision (mAP) and F1-score. It was found that YOLOv5s could detect VC plants with maximum classification accuracy of 98% and mAP of 96.3% at V6 stage of corn while YOLOv5s and YOLOv5m resulted in the lowest classification accuracy of 85% and YOLOv5m and YOLOv5l had the least mAP of 86.5% at VT stage on images of size 416 × 416 pixels. The developed CV algorithm has the potential to effectively detect and locate VC plants growing in the middle of corn fields as well as expedite the management aspects of TBWEP.
野生或自愿种植的棉花(VC)在达到针尖期(5-6叶期)时可以作为棉铃象鼻虫(Anthonomus grandis L.)害虫的寄主。德州棉铃象鼻虫根除计划(TBWEP)雇用人员定位和消灭生长在公路或轮作作物的田地旁的VC植物,但生长在田地中间的VC植物仍未被发现。在本文中,我们展示了基于You Only Look Once version 5 (YOLOv5)的计算机视觉(CV)算法在利用无人机系统(UAS)遥感图像检测玉米田中部生长在3个不同生长阶段(V3、V6和VT)的VC植物的应用。使用YOLOv5的所有4个变体(s, m, l和x),并根据分类精度,平均平均精度(mAP)和f1评分对其性能进行比较。结果发现,在416 × 416像素的图像上,YOLOv5s在玉米V6期的VC植株分类准确率最高,为98%,mAP为96.3%,而YOLOv5s和YOLOv5m在VT期的分类准确率最低,为85%,YOLOv5m和YOLOv5l的mAP最低,为86.5%。所开发的CV算法有可能有效地检测和定位生长在玉米田中间的VC植物,并加快TBWEP的管理方面。