Algorithms for feature extraction from synthetic aperture radar data

M. Sowmyashree, T. Ramachandra
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引用次数: 2

Abstract

Earth's surface consists of land features such as vegetation, soil, water, etc. Modeling of the earth's surface requires identification and understanding of the dynamics of land features. Analysis of land feature dynamics would reveal the changes that occur due to human induced activities or natural phenomenon. This plays a major role in providing up-to-date information of the natural resources. Data acquired remotely through space-borne sensors at regular intervals in visible and microwave bands aid in spatial mapping of the land features. Data acquired in visible and IR (Infrared) bands have been used for land use and land cover analysis. However, these data fails when there are cloud cover due to non-selective scattering. In this context, RADAR remote sensing would be useful as it provide information during all seasons due to long penetration properties. In present study, RADARSAT-2 single polarized HH (i.e., Horizontal to Horizontal with C-band) has been used to derive land features with spatial extent. Radar data interpretation and analysis is considered challenging and have both advantages and disadvantages in land use feature extraction. This study assess the performance of classification algorithms (Gaussian Maximum likelihood classifier (GMLC), Neural network classifier, Decision tree classifier (DTC), Contextual classification using sequential maximum a posteriori (SMAP) estimation for feature extraction using multi-temporal single polarized RADARSAT data, texture extracted data and fused data (optical sensor -LANDSAT ETM+ with SAR data). Accuracy assessments suggest that fused data perform better with all algorithms.
合成孔径雷达数据特征提取算法
地球表面由地物组成,如植被、土壤、水等。地球表面的建模需要识别和理解陆地特征的动态。分析地物动态可以揭示由于人类活动或自然现象而发生的变化。这在提供有关自然资源的最新资料方面起着重要作用。通过空载传感器在可见光和微波波段定期远程获取的数据有助于地物的空间制图。在可见光和红外波段获得的数据已用于土地利用和土地覆盖分析。然而,当有云层覆盖时,由于非选择性散射,这些数据失效。在这方面,雷达遥感将是有用的,因为它可以在所有季节提供信息,因为它具有长时间穿透的特性。本研究使用RADARSAT-2单极化HH(即c波段水平至水平)来获得具有空间范围的地物。雷达数据解释和分析被认为是具有挑战性的,在土地利用特征提取中有利有弊。本研究评估了分类算法(高斯最大似然分类器(GMLC)、神经网络分类器、决策树分类器(DTC)、使用序列最大后验(SMAP)估计的上下文分类器(使用多时间单极化RADARSAT数据、纹理提取数据和融合数据(光学传感器-LANDSAT ETM+与SAR数据)进行特征提取)的性能。准确性评估表明,融合数据在所有算法中都表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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