基于社交媒体训练的多时态InSAR自动城市聚落制图

Z. Miao, Lixin Wu, W. Shi, P. Gamba, M. Jiang
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引用次数: 1

摘要

全面认识城市聚落的空间分布,对于一系列与城市化进程引起的环境和生物变化相关的研究课题具有重要意义。在众多技术中,合成孔径雷达(SAR)在近二十年来成功地应用于城市住区测绘。虽然在以往的研究中已经做出了很多努力并取得了不同程度的成功,但研究工作仍在进行中,需要突出三个挑战。首先,去斑点的作用通常被低估,以至于在一些研究中完全忽略了对SAR图像质量的改善。其次,目前还缺乏一种结合全干涉SAR (InSAR)信息的方法。第三,通常需要训练样本来处理SAR图像以提取城市聚落,这既耗时又费力,甚至在区域/全球尺度上对卫星数据进行分类是不切实际的。为了解决这些问题,本文提出了一种利用社交媒体进行多时相InSAR训练的城市住区自动制图方法。为了提高检测性能和降低虚警率,首先通过均匀像素选择和鲁棒估计在不损失图像分辨率的情况下准确估计图像的强度和相干性。均匀像素也将被应用于从几何角度测量城市特征。然后,基于目前城市和城市地区充满了社交网络数据等单独的地理参考数据的事实,从社交媒体中自动生成训练样本。最后,基于改进的单类分类器,将这些多个信息源融合,提取城市地区。实验结果表明,该方法能够有效地提取城市区域,具有较好的精度。本研究为多时相InSAR图像的去斑处理提供了一种新的手段,并为社交媒体在遥感领域的应用提供了新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards an Automatic Urban Settlement Mapping from Multi-Tomporal InSAR Trained by Social Media
A comprehensive understanding of the spatial distribution of urban settlements is significant to a series of research topics related to environmental and biological changes caused by the urbanization process. Among various technologies, Synthetic Aperture Radar (SAR) has been successfully applied in urban settlement mapping in the past two decades. Although much effort with varying degrees of success has been made in previous studies, the research work is still ongoing, and three challenges should be highlighted. First, the effect of de-speckling is usually underestimated, to the extent that the improvement of the SAR image quality is totally ignored in some studies. Second, a method that combines full Interferometric SAR (InSAR) information is as yet missing. Third, training samples are generally required to process SAR images to extract urban settlements, which is time-consuming and labor-intensive, or even impractical when classifying satellite data at the regional/global scale. To address these issues, this paper presents an automatic method for urban settlement mapping trained by multi-temporal InSAR using social media. To improve the detection performance and reduce false alarm ratio, intensity and coherence are first accurately estimated without loss of image resolution by homogeneous pixel selection and robust estimators. The homogeneous pixels will be also applied to measure urban characteristics from the geometrical prospective. After that, training samples are automatically generated from social media based on the fact that cities and urban areas are nowadays full of individual geo-referenced data such as social network data Finally, these multiple information sources will be fused to extract urban areas based on an improved one class classifier. Experimental results show that the proposed method is effective in extracting urban areas with good accuracy. This study provides a new de-speckling means to process multi-temporal InSAR and sheds new light on the applications of social media in the field of remote sensing.
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