DAE-Mask: a novel deep-learning-based automatic detection model for in-field wheat diseases

被引:0
|
作者
Rui Mao
Yuchen Zhang
Zexi Wang
Xingan Hao
Tao Zhu
Shengchang Gao
Xiaoping Hu
机构
[1] Northwest A&F University,College of Information Engineering
[2] Northwest A &F University,College of Plant Protection
[3] Ministry of Agriculture and Rural Affairs,Key Laboratory of Integrated Pest Management on Crops in Northwestern Loess Plateau
[4] Ministry of Education,Key Laboratory of Plant Protection Resources & Pest Management
来源
Precision Agriculture | 2024年 / 25卷
关键词
Disease diagnosis; Precision agriculture; Multi-scale feature fusion; Attention mechanism; Deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
Wheat diseases seriously restrict the safety of wheat production and food quality. For farmers and agriculture technicians, diagnosing the disease with the naked eye is not suitable for modern precision agriculture. Deep learning has shown promise in crop disease diagnosis, but accuracy and speed remain a significant challenge in natural field conditions. In this study, a novel DAE-Mask method based on diversification-augmented features and edge features was proposed for intelligent wheat disease detection. DAE-Mask used Densely Connected Convolutional Networks (DenseNet) for preliminary feature extraction, and a backbone feature extraction network combining Feature Pyramid Network (FPN) and attention mechanism was designed to extract diversification-augmented features. To accelerate DAE-Mask, an Edge Agreement Head module based on Sobel filters was designed to compare edge features during training, which improved the model’s mask generation efficiency. We also built a multi-scene wheat disease dataset, MSWDD2022, containing images of wheat stripe rust, wheat powdery mildew, wheat yellow dwarf, and wheat scab. Our model achieved detection speed of 0.08s/pic. On MSWDD2022, our model with mean average precision (mAP) of 96.02% outperformed YOLOv5s, YOLOv8x, SSD, EfficientDet, CenterNet, and RefineDet by 7.79, 1.32, 3.54, 4.79, 9.77, and 5.29 percentage points, respectively. On the public dataset PlantDoc, our model with mAP of 57.68% outperformed YOLOv5s, YOLOv8x, SSD, EfficientDet, CenterNet, and RefineDet by 27.76, 6.48, 14.43, 11.79, 19.40, and 13.40 percentage points, respectively. Finally, the DAE-Mask was deployed on WeChat Mini Program to realize the real-time detection of in-field wheat diseases. The mAP reached 92.78%, and the average return delay of each image was 1.43s.
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页码:785 / 810
页数:25
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