Originally developed in fields such as robotics and autonomous driving with image-based navigation in mind, deep learning-based single-image depth estimation (SIDE) has found great interest in the wider image analysis community. Remote sensing is no exception, as the possibility to estimate height maps from single aerial or satellite imagery bears great potential in the context of topographic reconstruction. A few pioneering investigations have demonstrated the general feasibility of single image height prediction from optical remote sensing images and motivate further studies in that direction. With this paper, we present the first-ever demonstration of deep learning-based single image height prediction for the other important sensor modality in remote sensing: synthetic aperture radar (SAR) data. Besides the adaptation of a convolutional neural network (CNN) architecture for SAR intensity images, we present a workflow for the generation of training data, and extensive experimental results for different SAR imaging modes and test sites. Since we put a particular emphasis on transferability, we are able to confirm that deep learning-based single-image height estimation is not only possible, but also transfers quite well to unseen data, even if acquired by different imaging modes and imaging parameters.
翻译:最初在机器人和自主驾驶、图像导航、深学习的单一图像深度估计(SIDE)等领域开发,发现对更广泛的图像分析界极感兴趣。遥感也不例外,因为从单一航空或卫星图像估计高度图的可能性在地形重建中具有巨大潜力。一些开创性调查表明,光学遥感图像进行单一图像高度预测是一般可行的,并激励朝这个方向进一步研究。有了本文件,我们首次展示了遥感中其他重要传感器模式:合成孔径雷达(SAR)数据的深学习单一图像高度预测。除了对合成孔径雷达(SAR)结构进行改造外,我们还展示了生成培训数据的工作流程,以及不同合成孔径雷达成像模型和试验地点的广泛实验结果。由于我们特别强调了可转移性,我们可以确认,不仅有可能进行基于深学习的单一图像高度估计,而且即使通过不同的成像模式和成像参数获得,也相当顺利地将数据传输到看不见的数据。