论文标题
在玉米田中检测志愿棉花植物,对无人机遥感图像进行深入学习
Detecting Volunteer Cotton Plants in a Corn Field with Deep Learning on UAV Remote-Sensing Imagery
论文作者
论文摘要
自1800年代后期从墨西哥进入美国以来,棉花象鼻虫,Anthonomus Grandis Boheman是美国棉花行业的严重害虫,其损失超过160亿美元。这种害虫几乎被根除了。但是,德克萨斯州南部仍然面临这个问题,由于其亚热带气候可以全年生长,每年始终容易恢复有害生物。一旦到达销售虫的植物,一旦它们到达销售虫的植物,志愿棉花(VC)植物一旦到达销钉头正方形(5-6叶阶段),就可以用作这些害虫的宿主,因此需要被检测,位置,摧毁或喷涂。在本文中,我们介绍了一项研究,用于使用Yolov3在无人飞机系统(UAS)收集的三个频段航空图像上检测玉米田中的VC植物。本文的两倍目标是:(i)确定是否可以使用UAS和(ii)收集的RGB(红色,绿色和蓝色)的Yolov3在玉米场检测VC检测,以调查Yolov3在三种不同尺度上的图像对图像的行为(320 x 320 x 320 x 320 x 320 x 416 x 416 x 416 x 416 x 416,s2; s2; s2;和512;和512;和512;和512 x512;和512 x512; and s2;和512 x512;和512 x 512;平均平均精度(MAP)和F1分数在95%的置信度下。在三个量表之间,MAP没有显着差异,而S1和S3之间的AP存在显着差异(P = 0.04),S2和S3(P = 0.02)。 S2和S3之间的F1分数也存在显着差异(P = 0.02)。在所有三个量表上,MAP缺乏显着差异表明,训练有素的Yolov3模型可用于基于计算机视觉的远程试验的空中应用系统(RPAAS),以实时实时实时进行VC检测和喷雾应用。
The cotton boll weevil, Anthonomus grandis Boheman is a serious pest to the U.S. cotton industry that has cost more than 16 billion USD in damages since it entered the United States from Mexico in the late 1800s. This pest has been nearly eradicated; however, southern part of Texas still faces this issue and is always prone to the pest reinfestation each year due to its sub-tropical climate where cotton plants can grow year-round. Volunteer cotton (VC) plants growing in the fields of inter-seasonal crops, like corn, can serve as hosts to these pests once they reach pin-head square stage (5-6 leaf stage) and therefore need to be detected, located, and destroyed or sprayed . In this paper, we present a study to detect VC plants in a corn field using YOLOv3 on three band aerial images collected by unmanned aircraft system (UAS). The two-fold objectives of this paper were : (i) to determine whether YOLOv3 can be used for VC detection in a corn field using RGB (red, green, and blue) aerial images collected by UAS and (ii) to investigate the behavior of YOLOv3 on images at three different scales (320 x 320, S1; 416 x 416, S2; and 512 x 512, S3 pixels) based on average precision (AP), mean average precision (mAP) and F1-score at 95% confidence level. No significant differences existed for mAP among the three scales, while a significant difference was found for AP between S1 and S3 (p = 0.04) and S2 and S3 (p = 0.02). A significant difference was also found for F1-score between S2 and S3 (p = 0.02). The lack of significant differences of mAP at all the three scales indicated that the trained YOLOv3 model can be used on a computer vision-based remotely piloted aerial application system (RPAAS) for VC detection and spray application in near real-time.