基于无人机图像的深度学习玉米分类。概念的操作证明

F. Trujillano, Andres Flores, Carlos Saito, Mario Balcazar, Daniel Racoceanu
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引用次数: 10

摘要

气候变化正在影响秘鲁的农业生产,玉米是该地区最重要的作物之一。为了评估气候变化将如何影响粮食安全,必须不断监测粮食产量并建立统计模型。本研究提出了一个概念证明,使用深度学习技术对无人机(UAV)获取的近红外图像进行分类,以估计玉米的面积,用于粮食安全目的。结果表明,在获取过程中使用平衡良好的(海拔、季节、地区)数据库可以提高训练系统的性能,因此可以面对来自变量和难以获取的地理位置的作物分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Corn classification using Deep Learning with UAV imagery. An operational proof of concept
Climate change is affecting the agricultural production in Ancash - Peru and corn is one of the most important crops of the region. It is essential to constantly monitor grain yields and generate statistic models in order to evaluate how climate change will affect food security. The present study proposes as a proof of concept to use Deep learning techniques for the classification of near infrared images, acquired by an Unmanned Aerial Vehicle (UAV), in order to estimate areas of corn, for food security purpose. The results show that using a well balanced (altitudes, seasons, regions) database during the acquisition process improves the performance of a trained system, therefore facing crop classification from a variable and difficult-to-access geography.
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