Research on Crop Disease Image Recognition Based on Internet of Things Technology and Stacking Integrated Learning

IF 0.9 Q4 TELECOMMUNICATIONS
Fan Tongke
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引用次数: 0

Abstract

In the field of agriculture, disease control and management have been a hot research topic of great interest. In recent years, with the reduction of the cost of image sensors and the improvement of the accuracy of deep-learning algorithms, various information processing methods have been widely used in agricultural production. In this paper, an in-depth exploration of crop disease image recognition methods based on IoT technology is carried out. Initially, an innovative method of deploying sensor nodes within an irregular triangular grid is designed to facilitate effective data collection. Subsequently, accurate image segmentation and feature extraction were executed on the accumulated data. A two-tier Stacking framework was used to integrate three lightweight convolutional neural networks. The first level classifier is used to generate data output values for model training; the second level classifier learns further from the output of the first level classifier, corrects the bias of each individual learner in the framework, and produces the final prediction. On the publicly available PlantVillage data set, the EMNet integration model proposed in this thesis has an accuracy of 98.96%, which is at least 0.68% better than other influential DCNN validation accuracies, with good robustness and generalization.

基于物联网技术和层叠集成学习的作物病害图像识别研究
在农业领域,病害控制与管理一直是备受关注的热点研究课题。近年来,随着图像传感器成本的降低和深度学习算法精度的提高,各种信息处理方法在农业生产中得到了广泛的应用。本文对基于物联网技术的作物病害图像识别方法进行了深入探索。首先,设计了一种在不规则三角形网格内部署传感器节点的创新方法,以促进有效的数据收集。随后,对积累的数据进行精确的图像分割和特征提取。采用两层堆叠框架对三个轻量级卷积神经网络进行集成。第一级分类器用于生成用于模型训练的数据输出值;第二级分类器从第一级分类器的输出中进一步学习,纠正框架中每个学习者的偏差,并产生最终的预测。在公开可用的PlantVillage数据集上,本文提出的EMNet集成模型准确率达到98.96%,比其他有影响的DCNN验证准确率至少提高0.68%,具有良好的鲁棒性和泛化性。
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