Wang Guan, Sun Yu, Wang Jianxin
School of Information Science and Technology, Beijing Forestry University, Beijing 100083, China.
Comput Intell Neurosci. 2017;2017:2917536. doi: 10.1155/2017/2917536. Epub 2017 Jul 5.
Automatic and accurate estimation of disease severity is essential for food security, disease management, and yield loss prediction. Deep learning, the latest breakthrough in computer vision, is promising for fine-grained disease severity classification, as the method avoids the labor-intensive feature engineering and threshold-based segmentation. Using the apple black rot images in the PlantVillage dataset, which are further annotated by botanists with four severity stages as ground truth, a series of deep convolutional neural networks are trained to diagnose the severity of the disease. The performances of shallow networks trained from scratch and deep models fine-tuned by transfer learning are evaluated systemically in this paper. The best model is the deep VGG16 model trained with transfer learning, which yields an overall accuracy of 90.4% on the hold-out test set. The proposed deep learning model may have great potential in disease control for modern agriculture.
自动且准确地估计疾病严重程度对于粮食安全、疾病管理和产量损失预测至关重要。深度学习作为计算机视觉领域的最新突破,有望实现细粒度的疾病严重程度分类,因为该方法避免了劳动密集型的特征工程和基于阈值的分割。利用植物村数据集中的苹果黑腐病图像,植物学家进一步将其标注为四个严重程度阶段作为真实情况,训练了一系列深度卷积神经网络来诊断疾病的严重程度。本文系统地评估了从头开始训练的浅层网络和通过迁移学习进行微调的深度模型的性能。最佳模型是通过迁移学习训练的深度VGG16模型,在留出测试集上的总体准确率为90.4%。所提出的深度学习模型在现代农业的疾病控制中可能具有巨大潜力。