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Deforestation change detection using high-resolution multi-temporal X-Band SAR images and supervised learning classification

机译:使用高分辨率多时相X波段SAR图像和监督学习分类检测森林砍伐变化

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Remote sensing has been widely applied for environmental monitoring by means of change detection techniques, commonly for identifying deforestation signs which is the gateway for illegal activities such as uncontrolled urban growth and grazing pasture. Monthly acquired X-Band images from airborne Synthetic Aperture Radar (SAR) provided multi-temporal scenes employed in this work resulting in environmental incident reports forwarded to the responsible authorities. The present work proposes the use of both, Superpixel segmentation by Simple Linear Iterative Clustering (SLIC) and change detection by Object Correlation Images (OCI) not yet applied to multi-temporal X-Band high resolution SAR images, and the application of a simple Multilayer Perceptron (MLP) supervised learning technique for detecting and classifying the changes into relevant activities. Experiments have been performed using acquired SAR imagery from BRADAR airborne sensor OrbiSAR-2 under Brazilian Atlantic Forest which revealed possible deforestation activities comparing achieved results with those obtained with experts.
机译:遥感已通过变化检测技术广泛应用于环境监测,通常用于识别毁林迹象,而毁林迹象是非法活动(如不受控制的城市增长和牧场)的门户。每月从机载合成孔径雷达(SAR)获取的X波段图像提供了这项工作中使用的多时相场景,从而将环境事件报告转发给了主管部门。本工作提出了既通过简单线性迭代聚类(SLIC)进行超像素分割,又通过尚未应用于多时相X波段高分辨率SAR图像的对象相关图像(OCI)进行变化检测的方法,以及简单图像的应用。多层感知器(MLP)监督学习技术,用于检测变化并将其分类为相关活动。使用从巴西大西洋森林下的BRADAR机载传感器OrbiSAR-2获取的SAR图像进行了实验,该实验揭示了将已取得的成果与专家获得的结果相比较,可能的毁林活动。

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