基于鲁棒判别分析的遥感数据分类

Wina, D. Herwindiati, S. M. Isa
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引用次数: 3

摘要

本文讨论了经典的鲁棒判别分析算法在稻田、水体、建筑物和裸地区域分类中的应用。经常对多组进行判别分析。该方法依赖于从训练样本中计算的样本平均值和协方差矩阵。由于样本均值和协方差矩阵不具有鲁棒性,因此建议使用鲁棒估计量和协方差来代替。为了获得具有高击穿点的鲁棒判别分析过程,用可行解算法(FSA)代替了经典的估计量。输入数据为Landsat 8标准化植被指数(Normalize Difference Vegetation Index, NDVI)时间序列。分类过程分为两个步骤,训练和分类。训练步骤的目的是使用FSA估计器产生判别函数,分类步骤的目的是对稻田、水、建筑物和裸地区域进行分类。本文的目的是衡量经典和稳健判别分析方法对Landsat 8 NDVI时间序列中稻田、水域、建筑物和裸地区域进行分类的准确性。
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Robust discriminant analysis for classification of remote sensing data
This paper discusses the classic and robust discriminant analysis algorithm applied to the classification of rice fields, water, buildings, and bare land areas. Discriminant Analysis for multiple groups is often done. This method relies on the sample averages and covariance matrices computed from the training sample. Since sample averages and covariance matrices are not robust, it has been proposed to use robust estimators and covariance instead. In order to obtain a robust procedure with high breakdown point for discriminant analysis, the classical estimators are replaced by Feasible Solution Algorithm (FSA). The input data is a time-series of Landsat 8 Normalize Difference Vegetation Index (NDVI). The classification process is guided over two steps, training and classification. The purpose of the training step is to produce discriminant functions using FSA estimators, and the purpose of the classification step is to classify rice fields, water, buildings and bare land areas. The aim of this paper is to measure the accuracy of Classic and Robust Discriminant Analysis to classify the rice fields, water, buildings and bare land areas from Landsat 8 NDVI time series.
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