EMD-YOLO: an improved lightweight algorithm for detecting diseases in crop leaf based on YOLOv8n
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College of Information & Management Sciences, Henan Agricultural University, Zhengzhou 450046, China

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S432;TP391.41

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    Abstract:

    A novel lightweight algorithm for detecting diseases in crop leaf based on YOLOv8n,EMD-YOLO was proposed to accurately and rapidly identify diseases,reduce costs of manual diagnosis,and minimize the impact of leaf diseases on the production and quality of crops.The algorithm integrated the multi-scale dilated attention (MSDA),EffectiveSE attention mechanism,DySample upsampling,and Wise-IoU loss function.MSDA was combined with multi-scale spatial convolution and attention mechanisms to increase the efficiency of extracting multi-scale feature,while EffectiveSE strengthened the selection of feature and improved the representation performance of model.DySample upsampling preserved important features to enhance the map resolution of feature and the detection performance.Wise-IoU loss function optimized intersection over union (IoU) computation to improve the localization accuracy of model.The results showed that the accuracy,mAP@0.5,and weight of EMD-YOLO was 96.3%,92.8%,and 4.85 MB,respectively.The accuracy and mAP@0.5 of YOLOv8n increased by 3.0 and 3.6 percentage points compared with that of the baseline model YOLOv8n,respectively,while the weight decreased by 1.4 MB.It is indicated that EMD-YOLO has good generalization and is suitable for detecting diseases in crop leaf with mobile devices.

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王斌兵,张亚利,郑光,时雷,尹飞. EMD-YOLO: an improved lightweight algorithm for detecting diseases in crop leaf based on YOLOv8n[J]. Jorunal of Huazhong Agricultural University,2025,44(4):181-191.

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History
  • Received:November 28,2024
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  • Online: July 24,2025
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