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遥感科学

《遥感科学》是IVY出版社旗下的一本关注遥感科学与技术的综合性国际期刊,主要刊登有关遥感基础理论,遥感技术发展、遥感应用等研究领域内最新进展的学术性论文、评论性文章和研究综述性文章,旨在为该领域内的专家、学者、科研人员、管理人员提供一个良好的传播、分享和探讨遥感信息科学领域研究进展的交流平台,反映学术前沿水平,促进学术交流,把握遥感技术理论和实践前沿、研究水平和发展方向。本刊可接收中、英文稿件。其中,中文稿件要有详细的英文标题、作者、单位…… 【更多】 《遥感科学》是IVY出版社旗下的一本关注遥感科学与技术的综合性国际期刊,主要刊登有关遥感基础理论,遥感技术发展、遥感应用等研究领域内最新进展的学术性论文、评论性文章和研究综述性文章,旨在为该领域内的专家、学者、科研人员、管理人员提供一个良好的传播、分享和探讨遥感信息科学领域研究进展的交流平台,反映学术前沿水平,促进学术交流,把握遥感技术理论和实践前沿、研究水平和发展方向。

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ISSN Online:2329-8146

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Paper Infomation

Prediction Model of Nitrogen Content in Apple Leaves based on Ground Imaging Spectroscopy

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Author: Baichao Li, Xicun Zhu, Ruiyang Yu, Xiaoyan Guo, Shujing Cao, Huansan Zhao

Abstract: A prediction model of apple leaf nitrogen content based on ground imaging spectroscopy was established to rapidly and nondestructively detect nitrogen content in apple leaves. SOC710VP hyperspectral imager was used to obtain the imaging spectral information of apple leaves, and the average spectral curve of interest region was extracted. The study is to analyze the characteristics of imaging spectral curves of apple leaves with different nitrogen content. On the basis of the SG smoothing and first derivative pretreatment of the spectral curve, the maximum sensitive band with nitrogen content is screened and the spectral parameters are constructed. Three modeling methods of BP, SVM and RF were used to establish the prediction model of nitrogen content in apple leaves. The results showed that in the visible range, the nitrogen content of apple leaves was negatively correlated with the reflectance of the spectral curve, and was most obvious in the green range. The R² of BP, SVM and RF of apple leaf nitrogen content prediction model were 0.7283, 0.8128, 0.9086, RMSE were 0.9359, 0.7365, 0.5368, the R² of test model were 0.6260, 0.7294, 0.6512, RMSE were 0.9460, 0.7350, 0.9024.Comparing the prediction results of the three models, the optimal prediction model is SVM model, which can well predict the nitrogen content of apple leaves.

Keywords: Apple Leaves, SVM, Ground Imaging Spectroscopy

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