基于时间序列的MODIS植被覆盖NDVI研究

H. Srivastava, T. Pant
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引用次数: 0

摘要

本文利用时序数据对印度北方邦Prayagraj地区的植被覆盖度进行了研究。本研究采用MODIS NDVI 250m时间序列数据。在分类方面,采用基于像素的SVM分类器对数据集的20幅图像进行分类。将分类后的图像两两作为采集前后的输出,生成变化检测图,并计算研究区植被覆盖率百分比。在此基础上,利用ARIMA时间序列模型对158个样本数据集进行了检验。对测试样本的高植被类进行预测,均方误差为0.00604。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Time Series based Study of MODIS NDVI for Vegetation Cover
In this paper, the vegetation cover of Prayagraj, Uttar Pradesh has been studied with the time series data. For the study, MODIS NDVI 250m time series data have been used. For the classification, a pixel based SVM classifier is applied on 20 images of the data set. The classified images are used pairwise as pre and post harvesting outputs to generate change detection map, and to calculate the percentage vegetation cover of the study area. Further, a data set containing 158 samples with ARIMA time series model has been tested. The high vegetation class for the testing samples is predicted with mean squared error of 0.00604.
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