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COMPARISON OF PoISAR AND PolInSAR COHERENCE BASED LAND USE/LAND COVER CLASSIFICATION

机译:基于PoISAR和PolInSAR一致性的土地利用/土地覆盖分类的比较

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Classification of SAR data is a challenging as well as an essential task of continuous monitoring of the earth's surface due to its all-weather capability. This paper investigates PolSAR and PolInSAR coherence concept for the extraction of the earth features. The methodology integrated with Polarimetric decomposition models, PolInSAR Coherence, Mahalanobis and Knowledge based classification for land use and land cover (LULC) classification using fully polarimetric RADARSAT- 2 data. Polarimetric decompositions helped to investigate and understand the scattering mechanism patterns to extract the information of the earth's features. Freeman, Yamaguchi and H/A/Alpha decomposition models were used to extract different scattering mechanisms. The results shown overestimation of the volume scattering in highly dense and oriented building, this leads to misinterpretation of these buildings as forest in PoISAR classification. This issue is addressed by incorporating PolInSAR coherence, which is sensitive to both volumetric structure and temporal change of the scatterer. Forest regions were strongly affected by the temporal and volume decorrelation with time, which show low coherence values compared to the permanent scatterers like built-up areas. The backscatter response and the coherent patterns of vegetation compared to urban area are different, this helped to extract built-up regions more accurate. Therefore, PolInSAR coherence is utilized for extraction of the features by combining polarimetric and coherence information. The PolInSAR coherence extracted from the repeat-pass RADARSAT-2 images of 24 days temporal baseline for distinguishing vegetation and built-up areas. The Mahalanobis classification algorithm was used for extracting different features. To further improve the results, Knowledge based classification was executed by forming rules based on the statistical analysis of the features. The overall accuracy and kappa statistics of the PoISAR and PolInSAR Coherence classification are 79.17% and 0.75, 86.67% and 0.84 respectively. This states that PolInSAR coherence classification helped to characterize discrete and volume scatterers more accurately than the PoISAR classification.
机译:SAR数据的分类是一项具有挑战性的任务,并且由于其全天候的能力,它是连续监测地球表面的一项基本任务。本文研究了用于提取地球特征的PolSAR和PolInSAR相干概念。该方法与极化分解模型,PolInSAR相干性,马哈拉诺比斯语和基于知识的土地利用分类和土地利用分类(LULC)集成在一起,并使用了完全极化RADARSAT-2数据。极化分解有助于研究和理解散射机制模式,以提取地球特征的信息。使用Freeman,Yamaguchi和H / A / Alpha分解模型来提取不同的散射机制。结果表明,高密度定向建筑中的体积散射被高估了,这导致这些建筑在PoISAR分类中被误解为森林。通过合并PolInSAR相干解决了此问题,PolInSAR相干对散射体的体积结构和时间变化均敏感。森林区域受到时间和体积随时间的去相关性的强烈影响,与永久性散射体(如建成区)相比,它们显示出较低的相干值。与市区相比,后向散射响应和植被的连贯模式有所不同,这有助于更准确地提取集聚区域。因此,PolInSAR相干性通过结合极化信息和相干性信息来提取特征。 PolInSAR相干性是从24天时间基线的重复通行RADARSAT-2图像中提取的,以区分植被和建成区。 Mahalanobis分类算法用于提取不同的特征。为了进一步改善结果,通过基于特征的统计分析形成规则来执行基于知识的分类。 PoISAR和PolInSAR相干性分类的总体准确性和kappa统计分别为79.17%和0.75、86.67%和0.84。这表明,与PoISAR分类相比,PolInSAR相干分类有助于更准确地表征离散散射体和体积散射体。

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