利用时间序列高空间分辨率遥感图像识别放牧和刈割草地

Pauline Dusseux, L. Hubert‐Moy, R. Lecerf, X. Gong, T. Corpetti
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引用次数: 13

摘要

在许多地区,随着农业集约化,可以观察到草地的减少及其管理的变化。因此,农业系统中草地状况评价和管理是可持续农业的关键问题。然而,农区草地表面的清查非常不完整,其管理的时空分布仍然很大程度上是未知的。本研究的目的是从2006年在法国布列塔尼的一个实验流域获得的高空间分辨率时间序列图像中识别割草和放牧的草地。将两种辐射传输模型(PROSPECT+SAIL)耦合到遥感影像中,推导生物物理变量,以识别草地管理。然后,在训练样本的基础上,使用基于知识的分类、k近邻分类和决策树分类三种自动化程度越来越高的方法对从图像中提取的时间轮廓进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of grazed and mown grasslands using a time series of high-spatial-resolution remote sensing images
In many regions, a decrease of grasslands and change in their management can be observed with agriculture intensification. Hence, the evaluation of grassland status and management in farming systems is a key-issue for sustainable agriculture. However, inventory of grassland surfaces in agricultural areas is very incomplete and the spatiotemporal distribution of their management is still largely unknown. The objective of this study is to identify mown and grazed grasslands from a time series of high spatial resolution images acquired in 2006 on an experimental watershed located in Brittany, France. The coupling of two radiative transfer models (PROSPECT+SAIL) has been applied to the remote sensing images to derive biophysical variables, in order to identify grassland management. Then, based on training samples, the classification of the temporal profiles extracted from the images was performed using three different methods with increasing automation: a knowledge-based classification, a k-nearest neighborhood and a decision tree procedure.
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