遥感和GIS技术在阿塞拜疆戈布斯坦国家公园珍稀植被监测中的应用

Yelena M. Gambarova, A. Gambarov, R. Rustamov, M. Zeynalova
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引用次数: 12

摘要

本文介绍了稀有植被遥感监测的方法,重点介绍了训练样本集的图像统计分析和分类方法。首先定义了5种珍稀植被群落类型,并在此基础上设计了初步分类方案。在对训练样本进行初步统计分析后,定义了一种分类方案的修改算法:其中一种算法使我们创建了一个4类的方案(最终分类方案)。采用了签名统计、签名可分性和散点图等不同的分析方法。结果表明,平均可分性(变换散度)为1951.14,最小值为1732.44,最大值为2000,具有可接受的精度水平。在最终分类方案的训练结果上计算的权变矩阵在总体准确率上优于初始分类方案的训练结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote Sensing and GIS as an Advance Space Technologies for Rare Vegetation Monitoring in Gobustan State National Park, Azerbaijan
This paper describes remote sensing methodologies for monitoring rare vegetation with special emphasis on the Image Statistic Analysis for set of training samples and classification. At first 5 types of Rare Vegetation communities were defined and the Initial classification scheme was designed on that base. After preliminary Statistic Analysis for training samples, a modification algorithm of the classification scheme was defined: one led us to creating a 4 class’s scheme (Final classification scheme). The different methods analysis such as signature statistics, signature separability and scatter plots are used. According to the results, the average separability (Transformed Divergence) is 1951.14, minimum is 1732.44 and maximum is 2000 which shows an acceptable level of accuracy. Contingency Matrix computed on the results of the training on Final classi- fication scheme achieves better results, in terms of overall accuracy, than the training on Initial classification scheme.
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