This paper presents a despeckling method for Sentinel-1 GRD images based on the recently proposed framework "SAR2SAR": a self-supervised training strategy. Training the deep neural network on collections of Sentinel 1 GRD images leads to a despeckling algorithm that is robust to space-variant spatial correlations of speckle. Despeckled images improve the detection of structures like narrow rivers. We apply a detector based on exogenous information and a linear features detector and show that rivers are better segmented when the processing chain is applied to images pre-processed by our despeckling neural network.
翻译:本文介绍了基于最近提出的“SAR2SAR”框架的Sentinel-1 GRD图像破镜法:一个自我监督的培训战略。关于Sentinel 1 GRD图像收集的深神经网络培训导致一种对空间-变异空间相连接的强力破镜算法。淡像图像改进了对狭小河流等结构的探测。我们应用了基于外部信息和线性特征探测器的探测器,并表明当处理链应用到我们脱光神经网络预处理的图像时,河流的分解状况更好。