Real-Time Detection of Shot-Hole Disease in Cherry Fruit Using Deep Learning Techniques via Smartphone

IF 1.2 4区 农林科学 Q3 HORTICULTURE
Tahsin Uygun, Mehmet Metin Ozguven
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引用次数: 0

Abstract

Nowadays, pesticides are generally used to control diseases and pests. However, many farmers often do not fully understand what diseases and pests are and the extent of their effects. For this reason, the optimal use time of pesticides may be missed, or excessive amounts of pesticides may be used. For this reason, early detection and identification of the disease and pest should be made. One of the methods that allows early detection is deep learning. In this study, deep learning methods were used to detect shot-hole disease, which causes damage to the fruit part of the cherry tree, one of the Prunus species, in real time via a smartphone. To achieve this determination, studies were first carried out on object recognition algorithms in three different methodologies. These models are YOLOv8s, DETR Transformer and RTMDet MMDetection. In the training and test results performed on the created hybrid dataset, it was seen that the most successful algorithm was YOLOv8s. For the YOLOv8s algorithm, mAP50, mAP50-95, precision and recall performance metrics were found to be 92.7%, 58.9%, 86.7% and 90.2%, respectively. Since YOLOv8s showed the highest successful performance, this algorithm was used in the study for real-time detection. In the real-time experiment, it was determined that it correctly detected 115 of 119 images on the test dataset with an F1 score value of over 80%. As the output of the study, a QR (Quick Response) code was created in the study so that real-time detection can be attempted with a smartphone.

Abstract Image

通过智能手机使用深度学习技术实时检测樱桃果实的射孔病害
如今,农药一般用于控制病虫害。然而,许多农民往往并不完全了解什么是病虫害及其影响程度。因此,可能会错过农药的最佳使用时间,或使用过量的农药。因此,应及早发现和识别病虫害。深度学习是早期检测的方法之一。在这项研究中,使用了深度学习方法,通过智能手机实时检测对樱桃树(樱桃品种之一)果实部分造成损害的射孔病。为实现这一判断,首先对三种不同方法中的物体识别算法进行了研究。这些模型分别是 YOLOv8s、DETR Transformer 和 RTMDet MMDetection。在创建的混合数据集上进行的训练和测试结果表明,最成功的算法是 YOLOv8s。YOLOv8s 算法的 mAP50、mAP50-95、精确度和召回率分别为 92.7%、58.9%、86.7% 和 90.2%。由于 YOLOv8s 的成功率最高,因此本研究采用该算法进行实时检测。在实时实验中,该算法正确检测了测试数据集中 119 幅图像中的 115 幅,F1 分数超过 80%。作为研究的成果,研究中创建了一个 QR(快速反应)代码,以便尝试使用智能手机进行实时检测。
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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来源期刊
Erwerbs-Obstbau
Erwerbs-Obstbau 农林科学-园艺
CiteScore
1.70
自引率
15.40%
发文量
152
审稿时长
>12 weeks
期刊介绍: Erwerbs-Obstbau ist als internationales Fachorgan die führende Zeitschrift für Wissenschaftler, Berater und Praktiker im Erwerbsobstbau. Neben den wirtschaftlich führenden Obstarten widmet sich die Zeitschrift auch den Wildobstarten bzw. neuen Obstarten und deren zukünftige Bedeutung für die Ernährung des Menschen. Originalarbeiten mit zahlreichen Abbildungen, Übersichten und Tabellen stellen anwendungsbezogen den neuesten Kenntnisstand dar und schlagen eine Brücke zwischen Wissenschaft und Praxis. Die nach einem Begutachtungsprozeß zur Publikation angenommenen Originalarbeiten erscheinen in deutscher und englischer Sprache mit deutschem und englischem Titel. Review-Artikel, Buchbesprechungen und aktuelle Fachinformationen runden das Angebot ab.
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