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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A multi-temporal binary-tree classification using polarimetric RADARSAT-2 imagery
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A multi-temporal binary-tree classification using polarimetric RADARSAT-2 imagery

机译:使用Polarimetric Radars-2图像的多时间二进制树分类

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The polarimetric Synthetic Aperture Radar (PolSAR) signal contains more parameters than single or dual polarized SAR when using a scattering matrix to characterize targets. The increased information content of PolSAR provides more potential inputs for machine learning and classification applications; however, polarimetric parameters tend to be simply used as input variables and the optimum parameters to efficiently separate land classes and their physical meaning has received little attention. This research application proposes a Multitemporal Binary-Tree Classification framework (MBTC) to identify and integrate optimum scattering parameters and machine learning methods in a meaningful way. First, the optimum scattering mechanism that most effectively distinguishes pairs of land classes is derived by a Lagrange multiplier. Next, for each pair of classes, machine learning classifiers are trained by the optimum scattering power ratio and elevated by Out-Of-Bag (OOB) cross validation. Three machine learning algorithms- Support Vector Machine (SVM), Random Forest (RF) and Neutral Network (NN)- are investigated. Finally, a multi-temporal binary-tree classifier is constructed, in which each pair of land classes are distinguished by the optimized machine learning algorithms. Two independent study sites in Canada are used for evaluating the MBTC framework using RADARSAT-2 observations. The London site with 6 classes is used to analyze the optimum scattering mechanisms and execute a simple classification. The Carman site with 10 classes allows for an indepdent and comprehensive assessment of the MBTC by comparing against an advanced Model-Based Decomposition (MBD). At the London site, the MBTC achieves the maximum power ratio with the optimum scattering mechanism between each pair of classes and high overall accuracy (OA) of 91% and kappa coefficient (Kappa) of 0.9. At the Carman site, comparisons indicate that MBTC significantly outperforms the MBD with NN and SVM classifiers but has a similar accuracy to the MBD for RF classifier with OA of 85% and Kappa of 0.82. In cases with pairs of classes that are difficult to separate, such as barley and wheat, MBTC is shown to be superior in this research application.
机译:在使用散射矩阵以表征目标时,偏振型合成孔径雷达(POLSAR)信号包含比单个或双极化SAR更多的参数。 POLSAR的增加信息内容为机器学习和分类应用提供了更多的潜在输入;然而,偏振参数倾向于简单地用作输入变量和最佳参数,以有效地分离陆地类,其物理意义仅接受了很少的关注。本研究应用提出了一种多立体二进制树分类框架(MBTC),以以有意义的方式识别和集成最佳的散射参数和机器学习方法。首先,最佳的散射机制,最有效地区分陆地类对的通过拉格朗日乘法器导出。接下来,对于每对类,通过最佳散射功率比训练机器学习分类器,并通过袋外(OOB)交叉验证升高。调查了三种机器学习算法 - 支持向量机(SVM),随机森林(RF)和中性网络(NN)。最后,构建了多时间二进制树分类器,其中每对陆类由优化的机器学习算法区分。加拿大的两个独立的学习网站用于使用雷达拉特-2观察评估MBTC框架。具有6个类的伦敦网站用于分析最佳的散射机制并执行简单的分类。有10个类的卡曼站点通过与先进的基于模型的分解(MBD)进行比较,允许对MBTC进行税务和全面评估。在伦敦网站,MBTC实现了每对类别和高总精度(OA)的最佳散射机制,达到91%和Kappa系数(Kappa)的最佳功率比。在卡曼现场,比较表明,MBTC具有NN和SVM分类器的MBD显着优于MBD,但对于RF分类器的MBD具有类似的精度,其中OA为85%和κ0.82。在难以分离的成对的案例中,如大麦和小麦,MBTC在本研究应用中显示出优越。

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