基于深度神经网络和高光谱图像的辣椒叶片生长条件分类

Kang-in Choi, Keunho Park, Sung-Gyun Jeong
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引用次数: 2

摘要

近年来,利用高光谱图像对作物生长状况进行了分析研究。然而,物理因素和数据的复杂性等诸多因素给高光谱图像的分析带来了困难。提出了利用高光谱图像(HSI)和深度神经网络(DNN)对作物叶片生长状况进行分类的方法。通过高光谱图像获取植物的主要信息,并对这些信息进行预处理,用于DNN学习。预处理是将数据切割成小块并旋转,以使模型有效地运行。在实验中,将辣椒叶片分为正常和病虫受损四种类型和背景,实验结果准确率为90.9%。该方法的优点是数据生成方法不影响深度神经网络,可以对现有RGB图像中难以分类的各种生长条件进行分类。
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Classification of Growth Conditions in Paprika Leaf Using Deep Neural Network and Hyperspectral Images
Recently, the analysis research of crop's growth condition is done with the use of hyperspectral image. However, there are many factors such as physical factors and complexity of data make the hyperspectral image analysis difficult. This study presents the classification method of crop's leaf growth condition using hyperspectral image(HSI) and Deep Neural Network(DNN). Major information of plants is acquired through hyperspectral image, and the preprocessing is followed for the information to be used for DNN learning. The preprocessing is used by cutting the data in small patch size and rotating it for the models to be operated effectively. In the experiment, paprika leaves are divided into four types of leaves and backgrounds such as normal and damaged by harmful insects, and the result of the experiment showed 90.9% of accuracy. The presented method has advantages that the data generation method does not affect DNN and can classify various growth conditions that are difficult in the existing RGB image.
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