Xiao Jia-Rong, Chung Pei-Che, Wu Hung-Yi, Phan Quoc-Hung, Yeh Jer-Liang Andrew, Hou Max Ti-Kuang
Department of Mechanical Engineering, National United University, Miaoli 360001, Taiwan.
Miaoli District Agricultural Research and Extension Station, Miaoli 363201, Taiwan.
Plants (Basel). 2020 Dec 25;10(1):31. doi: 10.3390/plants10010031.
The strawberry ( × Duch.) is a high-value crop with an annual cultivated area of ~500 ha in Taiwan. Over 90% of strawberry cultivation is in Miaoli County. Unfortunately, various diseases significantly decrease strawberry production. The leaf and fruit disease became an epidemic in 1986. From 2010 to 2016, anthracnose crown rot caused the loss of 30-40% of seedlings and ~20% of plants after transplanting. The automation of agriculture and image recognition techniques are indispensable for detecting strawberry diseases. We developed an image recognition technique for the detection of strawberry diseases using a convolutional neural network (CNN) model. CNN is a powerful deep learning approach that has been used to enhance image recognition. In the proposed technique, two different datasets containing the original and feature images are used for detecting the following strawberry diseases-leaf blight, gray mold, and powdery mildew. Specifically, leaf blight may affect the crown, leaf, and fruit and show different symptoms. By using the ResNet50 model with a training period of 20 epochs for 1306 feature images, the proposed CNN model achieves a classification accuracy rate of 100% for leaf blight cases affecting the crown, leaf, and fruit; 98% for gray mold cases, and 98% for powdery mildew cases. In 20 epochs, the accuracy rate of 99.60% obtained from the feature image dataset was higher than that of 1.53% obtained from the original one. This proposed model provides a simple, reliable, and cost-effective technique for detecting strawberry diseases.
草莓(× 杜氏)是一种高价值作物,在台湾年种植面积约为500公顷。超过90%的草莓种植集中在苗栗县。不幸的是,各种病害显著降低了草莓产量。叶部和果实病害在1986年成为一种流行病。2010年至2016年,炭疽病冠腐病导致30%-40%的幼苗损失,移栽后植株损失约20%。农业自动化和图像识别技术对于检测草莓病害不可或缺。我们开发了一种使用卷积神经网络(CNN)模型检测草莓病害的图像识别技术。CNN是一种强大的深度学习方法,已被用于增强图像识别。在所提出的技术中,使用两个包含原始图像和特征图像的不同数据集来检测以下草莓病害——叶斑病、灰霉病和白粉病。具体而言,叶斑病可能影响冠部、叶片和果实,并表现出不同症状。通过对1306张特征图像使用训练周期为20个轮次的ResNet50模型,所提出的CNN模型对影响冠部、叶片和果实的叶斑病病例的分类准确率达到100%;对灰霉病病例的准确率为98%,对白粉病病例的准确率为98%。在20个轮次中,从特征图像数据集获得的99.60%的准确率高于从原始图像数据集获得的1.53%的准确率。该提出的模型为检测草莓病害提供了一种简单、可靠且经济高效的技术。