NDVI AVHRR/NOAA时间序列分类的特征提取

W. L. da Silva, R. R. V. Gonçalves, A. S. Siqueira, J. Zullo, F. A. M. G. Neto
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引用次数: 1

摘要

巴西农业企业最大的问题之一与农作物的估计和预测有关。在这个问题中,时间序列分类作为一种帮助生产估计的方法进入。本文利用中国农业科学院气象气候研究中心(CEPAGRI) AVHRR/NOAA数据仓库中的归一化植被指数(NDVI)时间序列,开发了一种自动识别甘蔗种植面积的分类器。我们假设由谐波信息生成的多维空间是研究时间序列相似性的合适空间。在傅里叶分解中,我们使用“序列特征”一词来指代由时间序列提取的系数。所提出的方法在2004/2005年巴西Jaboticabal市的甘蔗栽培图像分类中显示出很高的成功率。
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Feature extraction for NDVI AVHRR/NOAA time series classification
One of the biggest problems of agribusiness in Brazil is related to estimation and forecasting of agricultural crops. In this problem, time series classification enters as a way to help production estimation. In this paper, we are concerned with the development of an automatic classifier that identifies the areas covered with the sugarcane culture by using Normalized Difference Vegetation Index (NDVI) time series, from the AVHRR/NOAA data warehouse of Center of Meteorological and Climatic Research Applied to Agriculture (CEPAGRI). We assumed that a multidimensional space generated by information obtained in the harmonics is a appropriate space to study the similarity between time series. Here we used the word features of a series to refer the coefficients extracted by time series in Fourier decomposition. The proposed methodology has shown to be efficient with a high success rate for the classification of the culture of sugarcane in images from Jaboticabal city, in Brazil, 2004/2005.
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