Discriminating urban environments using multi-scale texture and multiple SAR images

F. Dell’acqua, P. Gamba
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引用次数: 15

Abstract

In this work we improve a methodology for discriminating urban environments by means of textural features in SAR images. In particular, we introduce multi-scale co-occurrence features and show how the feature set may be chosen as a function of the training set and the mapping classes. Moreover, we provide and compare results obtained by different satellite SAR sensors on the same urban test site, as well as a combination of these sets. Finally, a short analysis of the polarization effects and their importance in this framework of analysis is considered. The results are extremely encouraging, and show the potential of this technique, even if more research is needed to exploit the capabilities of the new generation of low-Earth orbit SAR satellites.
基于多尺度纹理和多幅SAR图像的城市环境识别
在这项工作中,我们改进了一种利用SAR图像的纹理特征来区分城市环境的方法。特别是,我们引入了多尺度共现特征,并展示了如何将特征集作为训练集和映射类的函数来选择。此外,我们提供并比较了不同卫星SAR传感器在同一城市试验场获得的结果,以及这些集合的组合。最后,简要分析了极化效应及其在这一分析框架中的重要性。结果非常令人鼓舞,并显示了这项技术的潜力,即使需要更多的研究来开发新一代低地球轨道SAR卫星的能力。
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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