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A New Classification Method Based on The Support Vector Regression of NDVI Time Series For Agricultural Crop Mapping

机译:一种新的分类方法基于农业作物映射NDVI时间序列的支持向量回归

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Time series of remotely sensed data are usually an important source of information for various agricultural applications. However, modeling and analyzing of time series data is not straightforward. In this paper, a new method for classification of time series data is proposed. The method is a modified Maximum Likelihood (ML) algorithms that uses Support Vector Regression (SVR) algorithms to estimates the probability of each class. The method is tested on the NDVI time series obtained from TM and ETM+ data for an agricultural region in Qazvin province, Iran. Six different crops have been considered for this study, and the classification results are evaluated using the kappa coefficient and the overall accuracy. The evaluations of experimental results and their comparison with the classic ML algorithm show that the proposed method, with kappa coefficient greater than 0.9, is a promising method and could be an alternative approach for agricultural classification needs.
机译:远程感测数据的时间序列通常是各种农业应用的重要信息来源。然而,时间序列数据的建模和分析并不简单。本文提出了一种用于分类时间序列数据的新方法。该方法是修改的最大似然(ML)算法,其使用支持向量回归(SVR)算法来估计每个类的概率。该方法在伊朗QAZVIN省的农业区的TM和ETM +数据获得的NDVI时间序列上进行测试。已经考虑了这项研究的六种不同的作物,并且使用Kappa系数和整体精度来评估分类结果。实验结果的评价及其与经典ML算法的比较表明,该方法具有大于0.9的κ系数,是一种有希望的方法,可能是农业分类需求的替代方法。

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