SAR Image Classification Using Mixed Spatial-Spectral Information and Pre-trained Convolutional Neural Networks

Melisa Unsalan, A. Radoi, M. Datcu
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Abstract

The recent technological advancements in remote sensing lead to an increased importance regarding the analysis of satellite data targeting security and surveillance tasks. Although the availability of data products is constantly augmented and the advances in Deep Learning technologies are constant, Synthetic Aperture Radar (SAR) image classification remains a challenge in the remote sensing domain because standard convolutional neural network-based architectures may encounter difficulties in recognizing objects that are characterized by similar texture, but different backscattering patterns. Moreover, training deep learning architectures requires a large volume of annotated data, which, in general, represents an obstacle, especially in the case of the remote sensing domain. This article addresses complex-valued SAR image classification through both spatial and Fourier-domain features, extracted by means of pretrained neural networks. While spatial features allow extracting knowl-edge regarding the structure and texture of the objects from intensity images, the physical properties of the objects are learned from radar spectrograms. In addition, we show that considering different polarizations of the SAR sensor, we are able to obtain better visual classifications. The experiments are conducted over Sentinel-1images, which are freely available for download under the Copernicus initiative.
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基于混合空间光谱信息和预训练卷积神经网络的SAR图像分类
最近遥感技术的进步使得分析卫星数据以安全和监视任务为目标变得更加重要。尽管数据产品的可用性不断增强,深度学习技术也在不断进步,但合成孔径雷达(SAR)图像分类在遥感领域仍然是一个挑战,因为基于标准卷积神经网络的架构在识别具有相似纹理但不同后向散射模式的目标时可能会遇到困难。此外,训练深度学习架构需要大量带注释的数据,这通常是一个障碍,特别是在遥感领域。本文通过空间和傅里叶域特征,通过预训练的神经网络提取复杂值SAR图像分类。虽然空间特征允许从强度图像中提取有关物体结构和纹理的知识边缘,但物体的物理特性是从雷达频谱图中学习的。此外,我们还表明,考虑到SAR传感器的不同偏振,我们能够获得更好的视觉分类。这些实验是在哨兵1号的图像上进行的,这些图像可以在哥白尼倡议下免费下载。
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