4.7 Article

Detection of a Potato Disease (Early Blight) Using Artificial Intelligence

Journal

REMOTE SENSING
Volume 13, Issue 3, Pages -

Publisher

MDPI
DOI: 10.3390/rs13030411

Keywords

deep learning; disease classification; PyTorch; EfficientNet; image processing; machine vision; smart sprayer

Funding

  1. Natural Science and Engineering Research Council of Canada

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This study evaluated the potential of using machine vision combined with deep learning to identify early blight disease in potato production systems. By training CNN models, the study accurately classified the disease at various growth stages, with EfficientNet performing the best.
This study evaluated the potential of using machine vision in combination with deep learning (DL) to identify the early blight disease in real-time for potato production systems. Four fields were selected to collect images (n = 5199) of healthy and diseased potato plants under variable lights and shadow effects. A database was constructed using DL to identify the disease infestation at different stages throughout the growing season. Three convolutional neural networks (CNNs), namely GoogleNet, VGGNet, and EfficientNet, were trained using the PyTorch framework. The disease images were classified into three classes (2-class, 4-class, and 6-class) for accurate disease identification at different growth stages. Results of 2-class CNNs for disease identification revealed the significantly better performance of EfficientNet and VGGNet when compared with the GoogleNet (FScore range: 0.84-0.98). Results of 4-Class CNNs indicated better performance of EfficientNet when compared with other CNNs (FScore range: 0.79-0.94). Results of 6-class CNNs showed similar results as 4-class, with EfficientNet performing the best. GoogleNet, VGGNet, and EfficientNet inference time values ranged from 6.8-8.3, 2.1-2.5, 5.95-6.53 frames per second, respectively, on a Dell Latitude 5580 using graphical processing unit (GPU) mode. Overall, the CNNs and DL frameworks used in this study accurately classified the early blight disease at different stages. Site-specific application of fungicides by accurately identifying the early blight infected plants has a strong potential to reduce agrochemicals use, improve the profitability of potato growers, and lower environmental risks (runoff of fungicides to water bodies).

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