System of Counting Green Oranges Directly from Trees Using Artificial Intelligence

Matheus Felipe Gremes, Igor Rossi Fermo, Rafael Krummenauer, Franklin César Flores, Cid Marcos Gonçalves Andrade, Oswaldo Curty da Motta Lima
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Abstract

Agriculture is one of the most essential activities for humanity. Systems capable of automatically harvesting a crop using robots or performing a reasonable production estimate can reduce costs and increase production efficiency. With the advancement of computer vision, image processing methods are becoming increasingly viable in solving agricultural problems. Thus, this work aims to count green oranges directly from trees through video footage filmed in line along a row of orange trees on a plantation. For the video image processing flow, a solution was proposed integrating the YOLOv4 network with object-tracking algorithms. In order to compare the performance of the counting algorithm using the YOLOv4 network, an optimal object detector was simulated in which frame-by-frame corrected detections were used in which all oranges in all video frames were detected, and there were no erroneous detections. Being the scientific and technological innovation the possibility of distinguishing the green color of the fruits from the green color of the leaves. The use of YOLOv4 together with object detectors managed to reduce the number of double counting errors and obtained a count close to the actual number of oranges visible in the video. The results were promising, with an mAP50 of 80.16%, mAP50:95 of 53.83%, precision of 0.92, recall of 0.93, F1-score of 0.93, and average IoU of 82.08%. Additionally, the counting algorithm successfully identified and counted 204 oranges, closely approaching the actual count of 208. The study also resulted in a database with an amount of 644 images containing 43,109 orange annotations that can be used in future works.
利用人工智能直接从树上数青橙的系统
农业是人类最基本的活动之一。能够使用机器人自动收获作物或执行合理产量估算的系统可以降低成本并提高生产效率。随着计算机视觉的进步,图像处理方法在解决农业问题方面变得越来越可行。因此,这项工作旨在通过沿着种植园的一排橘子树拍摄的视频片段,直接从树上数出绿橙。针对视频图像处理流程,提出了将YOLOv4网络与目标跟踪算法相结合的解决方案。为了比较使用YOLOv4网络的计数算法的性能,模拟了一种最优目标检测器,其中使用逐帧校正检测,检测到所有视频帧中的所有橙子,并且没有错误检测。作为科技创新,果实绿色与叶子绿色的区分成为可能。YOLOv4与目标检测器一起使用,设法减少了重复计数错误的数量,并获得了接近视频中可见的橙子实际数量的计数。结果显示:mAP50为80.16%,mAP50:95为53.83%,准确率为0.92,召回率为0.93,f1评分为0.93,平均IoU为82.08%。此外,计数算法成功地识别并计数了204个橙子,接近实际计数的208个。该研究还产生了一个包含644张图像的数据库,其中包含43109个橙色注释,可以在未来的工作中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.70
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