利用人工神经网络处理高光谱特征估算甘蔗生产力

C. Espinosa, S. Velásquez, F. L. Hernández
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引用次数: 0

摘要

该项目使用人工神经网络来计算Hatico农场有机甘蔗作物的净初级生产力,该农场位于考卡谷的塞里托。本项目采用的试验方案为以绿肥(禽粪和豇豆)为基础的6个氮肥处理。在最后两个作物物候阶段,将田间采集的高光谱数据提供给人工神经网络。此外,还进行了探索性数据研究,以识别与光饱和度和曲率几何相关的异常信号。第一个应用的网络是自动编码器,为了降低数据的辐射分辨率的维数。第二个应用的网络是多层感知器(Multilayer Perceptron, MLP),用于计算patch的生产率值。在比较Cenicaña提供的实际生产率值后,本项目在生产率预测中获得了91.23%的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sugarcane Productivity Estimation Through Processing Hyperspectral Signatures Using Artificial Neural Networks
This project uses an artificial neural network to calculate the net primary productivity of an organic sugarcane crop in Hatico’s farm, in Cerrito, Valle del Cauca. The pilot scheme used in this project is composed by 6 treatments of nitrogen fertilization based on green manures (poultry manure and cowpea). During the last two crops’ phenological phases, the artificial neural network was provided with hyperspectral data collected in the field. In addition, an exploratory data study was implemented in order to identify anomalous signs related to the light saturation and the curvature geometry. The first network applied was Autoencoder, in order to reduce the dimensionality of the radiometric resolution of the data. The second network applied was Multilayer Perceptron (MLP), to calculate the productivity values of the patches. After having compared the actual productivity values provided by Cenicaña, this project obtained an accuracy of 91.23% in the productivity predictions.
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