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FEATURE EXTRACTION USING MULTI-TEMPORAL FULLY POLARIMETRIC SAR DATA

机译:使用多时间全极化SAR数据进行特征提取

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The main objective of this study was to explore the potential of the multi-temporal PolSAR data in LULC mapping and to evaluate the accuracy of classification using single date and multi-temporal data. Multi-temporal data acquired on three different dates were used. Advanced classification techniques Support Vector Machine and Rule Based Hierarchical approaches were performed on multitemporal ALOS PALSAR data to classify features at different temporal combinations, In this study, SVM classification was applied on the derived output of Yamaguchi decomposition model, for which kernel approach of second order polynomial was used, In Rule Based Hierarchical approach, Backscattering coefficients, Yamaguchi and H/A/Alpha decomposition statistics are computed and analyzed to estimate the decision boundaries of the features to separate feature at different hierarchical levels. SVM classified the PolSAR data efficiently of single data, highest overall accuracy and kappa statistics achieved was 67.65% and 0.61 from the individual image. Rule based classified map of single date, highest overall accuracy and kappa statistics achieved was 68% and 0.67. Based on the accuracy assessment, SVM and Rule Based classification both are approximately of same accuracy but comparatively Rule Based classification was accurate temporally. Rule Based classification was further considered for multi-temporal classification and achieved high overall accuracy and kappa statistics of 80% and 0.76. This proves that multi-temporal PolSAR data helps to increase the accuracy of classification in LULC mapping.
机译:这项研究的主要目的是探索多时相PolSAR数据在LULC绘图中的潜力,并使用单日和多时相数据评估分类的准确性。使用在三个不同日期获取的多时间数据。对多时间ALOS PALSAR数据执行了先进的分类技术支持向量机和基于规则的分层方法,以对不同时间组合下的特征进行分类。在本研究中,将SVM分类应用于Yamaguchi分解模型的导出输出,为此采用了二阶核方法使用多项式,在基于规则的分层方法中,计算并分析反向散射系数,Yamaguchi和H / A / Alpha分解统计量,以估计特征的决策边界,以分离不同层次的特征。 SVM对单个数据的PolSAR数据进行了有效分类,从单个图像中获得的最高总体准确性和kappa统计数据分别为67.65%和0.61。基于规则的单日,最高总体准确性和kappa统计分类图分别为68%和0.67。基于准确性评估,SVM和基于规则的分类两者的准确性大致相同,但基于规则的分类在时间上较为准确。基于规则的分类被进一步考虑用于多时间分类,并获得了80%和0.76的高总体准确性和kappa统计。这证明了多时间PolSAR数据有助于提高LULC映射中分类的准确性。

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