基于PolSAR图像的极端梯度增强作物分类分析

Mustafa Ustuner, F. B. Sanli, S. Abdikan, G. Bilgin, C. Goksel
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引用次数: 8

摘要

本研究评估了三种增强器类型(两种基于树的模型和一种线性模型)在极端梯度增强(XGBoost)中使用多时相PolSAR(偏振合成孔径雷达)图像进行作物分类的影响。由于集成学习算法在精度方面比单一分类器具有更高的性能,因此在遥感分类中受到了极大的关注。极端梯度增强是传统增强技术的正则化扩展,可以克服梯度增强(又称梯度增强机)的过拟合约束。在XGBoost上测试了线性增强器、树增强器和DART (Dropouts meet Multiple Additive Regression Trees)增强器三种类型的作物分类。从多时相PolSAR数据中提取两种极化数据集(线性后向散射系数和cloud - pottier分解参数)并将其纳入分类步骤。除了探索XGBoost的增强类型外,还详细分析了偏振特征对作物分类的影响。我们的实验结果表明,在两种极化数据集的总体分类精度方面,树增强器和DART增强器被发现优于线性增强器。线性后向散射系数的树木增强器分类准确率最高,达到87.97%。此外,线性后向散射系数在分类精度方面相对于cloud - pottier分解具有更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Booster Analysis of Extreme Gradient Boosting for Crop Classification using PolSAR Imagery
This study evaluates the impacts of three booster types (two tree-based and one linear model) in extreme gradient boosting (XGBoost) for crop classification using multi-temporal PolSAR (Polarimetric Synthetic Aperture Radar) images. Ensemble learning algorithms have received great attention in remote sensing for classification due to their greater performance compared to single classifiers in terms of accuracy. Extreme gradient boosting is the regularized extension of traditional boosting techniques and could overcome the overfitting constrain of gradient boosting (a.k.a gradient boosting machine). Three types of booster which are linear booster, tree booster and DART (Dropouts meet Multiple Additive Regression Trees) booster were tested on XGBoost for crop classification. From the multi-temporal PolSAR data, two types of polarimetric dataset (linear backscatter coefficients and Cloude–Pottier decomposed parameters) were extracted and incorporated into the classification step. The impacts of polarimetric features for crop classification were also analyzed in detailed besides exploring the boosting types of XGBoost. Our experimental results demonstrated that tree booster and DART booster were found to be superior compared the linear booster in terms of overall classification accuracy for both polarimetric dataset. The highest classification accuracy (87.97%) was achieved by tree booster with linear backscatter coefficients. Furthermore, linear backscatter coefficients achieved higher performance with respect to Cloude–Pottier decomposition in terms of classification accuracy.
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