Enhanced Deep Learning SAR Despeckling Networks Based on SAR Assessing Metrics

Sergio Vitale;Giampaolo Ferraioli;Vito Pascazio;Luis Gomez Deniz
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Abstract

The proposal of deep learning (DL) solutions for synthetic aperture radar (SAR) image despeckling has recently widespread. Such solutions have been mainly designed from a DL perspective by leveraging the training and validation stage on the use of typical norm-based cost functions. For going beyond the DL perspective, in this letter, we propose an SAR-based validation stage by using SAR assessing metrics in the design and hyperparameter selection of neural networks. In the first phase, SAR assessing metrics may be used only as validation metrics to highlight critical issues that cannot be spotted with standard image-processing quality metrics. In a second phase, the same SAR assessing metrics may be used directly for enhancing the DL solution by addressing specific issues that arose during the previous SAR-based validation stage. To this aim, three different DL SAR despeckling solutions and four different SAR assessing metrics have been considered. The outcome of this analysis shows the importance of including SAR knowledge in the training and validation stages of the design of a DL solution for SAR image despeckling.
基于SAR评估指标的增强型深度学习SAR去噪网络
近年来,基于深度学习的合成孔径雷达(SAR)图像去斑算法得到了广泛的应用。这些解决方案主要是从深度学习的角度设计的,利用了典型的基于规范的成本函数的训练和验证阶段。为了超越深度学习的视角,在这封信中,我们提出了一个基于SAR的验证阶段,通过在神经网络的设计和超参数选择中使用SAR评估指标。在第一阶段,SAR评估指标可能仅用作验证指标,以突出使用标准图像处理质量指标无法发现的关键问题。在第二阶段,可以直接使用相同的SAR评估指标,通过解决先前基于SAR的验证阶段出现的特定问题来增强DL解决方案。为此,考虑了三种不同的DL SAR去噪解决方案和四种不同的SAR评估指标。这一分析的结果表明,在SAR图像去斑的DL解决方案设计的训练和验证阶段,包括SAR知识的重要性。
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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