Yang Guofeng, He Yong, Yang Yong, Xu Beibei
College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou, China.
Agricultural Information Institute, Chinese Academy of Agricultural Sciences, Beijing, China.
Front Plant Sci. 2020 Dec 22;11:600854. doi: 10.3389/fpls.2020.600854. eCollection 2020.
Fine-grained image classification is a challenging task because of the difficulty in identifying discriminant features, it is not easy to find the subtle features that fully represent the object. In the fine-grained classification of crop disease, visual disturbances such as light, fog, overlap, and jitter are frequently encountered. To explore the influence of the features of crop leaf images on the classification results, a classification model should focus on the more discriminative regions of the image while improving the classification accuracy of the model in complex scenes. This paper proposes a novel attention mechanism that effectively utilizes the informative regions of an image, and describes the use of transfer learning to quickly construct several fine-grained image classification models of crop disease based on this attention mechanism. This study uses 58,200 crop leaf images as a dataset, including 14 different crops and 37 different categories of healthy/diseased crops. Among them, different diseases of the same crop have strong similarities. The NASNetLarge fine-grained classification model based on the proposed attention mechanism achieves the best classification effect, with an score of up to 93.05%. The results show that the proposed attention mechanism effectively improves the fine-grained classification of crop disease images.
细粒度图像分类是一项具有挑战性的任务,因为难以识别判别性特征,找到能充分代表物体的细微特征并非易事。在作物病害的细粒度分类中,经常会遇到光照、雾气、重叠和抖动等视觉干扰。为了探究作物叶片图像特征对分类结果的影响,分类模型应在提高模型在复杂场景下分类准确率的同时,关注图像中更具判别力的区域。本文提出了一种能有效利用图像信息区域的新型注意力机制,并描述了如何基于此注意力机制利用迁移学习快速构建多个作物病害细粒度图像分类模型。本研究使用58200张作物叶片图像作为数据集,包括14种不同作物以及37种不同类别的健康/患病作物。其中,同一作物的不同病害具有很强的相似性。基于所提出的注意力机制的NASNetLarge细粒度分类模型取得了最佳分类效果,得分高达93.05%。结果表明,所提出的注意力机制有效提高了作物病害图像的细粒度分类。