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基于空地多源信息的獼猴桃果園病蟲害檢測方法
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國家重點研發(fā)計劃項目(2022YFD1900802)、國家自然科學基金聯(lián)合基金重點項目(U2243235)和陜西省重點研發(fā)計劃項目(2022NY-220)


Design of Kiwifruit Orchard Disease and Pest Detection System Based on Aerial and Ground Multi-source Information
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    摘要:

    針對現(xiàn)有檢測方式難以大面積準確檢測果園單株獼猴桃病蟲害信息,,且僅憑地面或者遙感數(shù)據(jù)獲取信息不全的問題,,通過搭建地面數(shù)據(jù)采集設備,配合無人機采集遙感圖像,,從空地兩個角度獲取了更全面的獼猴桃冠層葉片病蟲害信息,。選取Pytorch深度學習框架,使用YOLO v5s算法進行病蟲害葉片的目標檢測,。計算單株果樹被害率時,,通過圖像處理統(tǒng)計被害葉片與冠層葉片的像素數(shù)來代替數(shù)量統(tǒng)計。在冠層像素數(shù)計算過程中,,對比K-means聚類分析與大津法閾值分割算法,,后者用時更少,操作更加簡單,。最終得到每株果樹冠層不同部分的病害率和蟲害率,,結果表明,該檢測模型精確率為99.54%,召回率為99.24%,,驗證集目標檢測和分類損失值均值分別為0.08469和0.00083,。同時,分別選取無人機和地面病害和蟲害數(shù)據(jù)20個,,將檢測模型獲得的病蟲害葉片數(shù)量的預測值與人工標注的真實值進行比較,,遙感和地面的病害與蟲害檢測模型的平均絕對值誤差分別為3.5、2.5,、0.9和0.45,。地面數(shù)據(jù)檢測效果好于遙感數(shù)據(jù)檢測效果。本研究可為建立獼猴桃果園病蟲害檢測系統(tǒng)提供依據(jù),,同時為獼猴桃果園的精細化管理提供指導,。

    Abstract:

    Aiming at the existing detection methods, it is difficult to accurately detect the information of kiwifruit pests and diseases on single plants in orchards over a large area, and the information obtained by ground or remote sensing data alone is incomplete. By building the ground data collection equipment, together with the remote sensing images collected by the UAV, more comprehensive information on kiwifruit canopy leaf pests and diseases was obtained from both air and ground perspectives. The Pytorch deep learning framework was selected and the YOLO v5s model was used for target detection of pest and disease leaves. When calculating the infestation rate of a single fruit tree, the pixel values of infested leaves and canopy leaves were counted by image processing instead of number counting. During the calculation of canopy pixel values, K-means cluster analysis and Otsu method threshold segmentation algorithm were compared, and both methods were more accurate, with the latter taking less time and being simpler to operate. As a result, the precision rate of the detection model was 99.54%, the recall rate was 99.24%, and the mean values of target detection and classification loss in the validation set were 0.08469 and 0.00083, respectively. Meanwhile, totally 20 disease and pest data from UAV and ground were selected, respectively, and the predicted values of the number of pest and disease leaves obtained from the detection model were compared with the real values labeled manually, and the mean absolute value errors of the disease and pest detection models from remote sensing and ground were 3.5, 2.5, 0.9, and 0.45, respectively. The detection effect of the ground-based data was better than that of the remote sensing data. The research result can provide a basis for the establishment of kiwifruit orchard pest and disease detection system, and also provide guidance for the fine management of kiwifruit orchards.

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閆云才,郝碩亨,高亞玲,辛迪,牛子杰.基于空地多源信息的獼猴桃果園病蟲害檢測方法[J].農業(yè)機械學報,2023,54(s2):294-300. YAN Yuncai, HAO Shuoheng, GAO Yaling, XIN Di, NIU Zijie. Design of Kiwifruit Orchard Disease and Pest Detection System Based on Aerial and Ground Multi-source Information[J]. Transactions of the Chinese Society for Agricultural Machinery,2023,54(s2):294-300.

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  • 收稿日期:2023-06-26
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  • 在線發(fā)布日期: 2023-08-26
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