Online Identification Method of Tea Diseases in Complex Natural Environments

Senlin Xie;Chunwu Wang;Chang Wang;Yifan Lin;Xiaoqing Dong
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Abstract

An intelligent Internet-of-Things (IoT) hardware system in the field tea plantations was built, comprising collection of tea images by HD zoom cameras in a cluster structure and deployment of the detection model by cluster-head edge computing nodes. Data was sent to customer premise equipment through edge nodes and gateways and then to cloud platforms, which provided a hardware platform for identifying remote tea disease online. Field-placed cameras were used as the main acquisition means to study various diseases on Yashixiang, a typical variety of Chaozhou Dancong tea, in different seasons and weather conditions and shooting angles in a natural year period with complex backgrounds. In turn, we constructed a natural environment high-quality dataset covering major diseases e.g., tea anthracnose, tea leaf blight, tea grey blight, Pseudocercospora theae, etc. and explored the feasibility of deep learning algorithms for automatic identification of Chaozhou Dancong tea diseases. Results showed that the recognition rate of Swim Transformer reached 94% in complex natural environments. This paper demonstrated the effectiveness of the dataset and the feasibility of deep learning algorithms applied to the automatic identification of diseases of Chaozhou Dancong tea, laying a foundation for the practical application of the technology in complex natural environments.
复杂自然环境下茶叶病害的在线识别方法
构建了田间茶园的智能物联网硬件系统,包括通过集群结构中的高清变焦相机收集茶叶图像,以及通过集群头部边缘计算节点部署检测模型。数据通过边缘节点和网关发送到客户设备,然后发送到云平台,云平台为在线识别远程茶病提供了硬件平台。以野外摄像机为主要采集手段,在背景复杂的自然年期内,研究了潮州丹聪茶典型品种鸭石香在不同季节、不同天气条件和不同拍摄角度下的各种病害。进而,我们构建了一个涵盖主要病害的自然环境高质量数据集,如茶炭疽病、茶叶枯病、茶灰疫病、茶伪尾孢病等,并探索了深度学习算法用于潮州丹聪茶病害自动识别的可行性。结果表明,在复杂的自然环境中,Swim Transformer的识别率达到94%。本文证明了数据集的有效性和深度学习算法应用于潮州丹丛茶病害自动识别的可行性,为该技术在复杂自然环境中的实际应用奠定了基础。
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