Chen Liangzhe, Cui Xiaohui, Li Wei
School of Artificial Intelligence and Computer Science & Jiangsu Key Laboratory of Media Design and Software Technology & Science Center for Future Foods, Jiangnan University, Wuxi 214122, China.
School of Cyber Science and Engineering, Wuhan University, Wuhan 430072, China.
Foods. 2021 Oct 14;10(10):2441. doi: 10.3390/foods10102441.
Plant diseases can harm crop growth, and the crop production has a deep impact on food. Although the existing works adopt Convolutional Neural Networks (CNNs) to detect plant diseases such as Apple Scab and Squash Powdery mildew, those methods have limitations as they rely on a large amount of manually labeled data. Collecting enough labeled data is not often the case in practice because: plant pathogens are variable and farm environments make collecting data difficulty. Methods based on deep learning suffer from low accuracy and confidence when facing few-shot samples. In this paper, we propose local feature matching conditional neural adaptive processes (LFM-CNAPS) based on meta-learning that aims at detecting plant diseases of unseen categories with only a few annotated examples, and visualize input regions that are 'important' for predictions. To train our network, we contribute Miniplantdisease-Dataset that contains 26 plant species and 60 plant diseases. Comprehensive experiments demonstrate that our proposed LFM-CNAPS method outperforms the existing methods.
植物病害会损害作物生长,而作物产量对粮食有着深远影响。尽管现有工作采用卷积神经网络(CNN)来检测诸如苹果黑星病和南瓜白粉病等植物病害,但这些方法存在局限性,因为它们依赖大量人工标注数据。在实际中往往无法收集到足够的标注数据,原因如下:植物病原体具有多样性,且农场环境使得数据收集困难。基于深度学习的方法在面对少样本时准确率和置信度较低。在本文中,我们提出了基于元学习的局部特征匹配条件神经自适应过程(LFM-CNAPS),旨在仅用少量带注释示例来检测未见类别的植物病害,并可视化对预测“重要”的输入区域。为了训练我们的网络,我们贡献了包含26种植物物种和60种植物病害的Miniplantdisease数据集。综合实验表明,我们提出的LFM-CNAPS方法优于现有方法。