Training Supervised Neural Networks for PolSAR Despeckling With an Hybrid Approach

被引:0
作者
Lu, Xialei [1 ]
Vitale, Sergio [1 ,2 ]
Aghababei, Hossein [3 ]
Ferraioli, Giampaolo [2 ,4 ]
Pascazio, Vito [1 ,2 ]
机构
[1] Univ Parthenope Naples, Dept Engn, I-80143 Naples, Italy
[2] Natl Interuniv Consortium Telecommun, I-43124 Parma, Italy
[3] Univ Twente, Fac Geoinformat Sci & Earth Observat, Dept Earth Observat Sci, NL-7514 AE Enschede, Netherlands
[4] Univ Parthenope Naples, Dept Sci & Technol, I-80143 Naples, Italy
关键词
Covariance matrices; Training; Speckle; Noise measurement; Neural networks; Earth; Deep learning; CNN; deep learning (DL); despeckling; image restoration; statistical distribution; synthetic aperture radar (SAR); SAR;
D O I
10.1109/LGRS.2023.3333671
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Synthetic aperture radar (SAR) are fundamental system for Earth Observation. In particular, polarimetric SAR (PolSAR) sensors provide images of a scene at different polarizations, enriching the information that can be retrieved. Due to their coherent nature, SAR images are complex data affected by a multiplicative noise, called speckle. The presence of this noise hinders the interpretation of images, making speckle removal a fundamental preprocessing step for further applications. Several deep learning (DL)-based approaches have been recently proposed for speckle removal in PolSAR data relying, due to the lack of a real ground truth, on different strategies for constructing training datasets making a real comparison complicated. In this work, a study on the construction of a training dataset for PolSAR despeckling is proposed. In particular, considering the analysis recently conducted on the construction of the dataset for training supervised neural networks for SAR amplitude despeckling, the aim is to extend such studies to the PolSAR case. In particular, the commonly used multitemporal approach, relying on the stack of real data, is compared with the so-called hybrid approach, in which a mixture of real and synthetic data is proposed. A specific DL solution has been chosen for such comparison, but the analysis could be extended to whatever supervised neural network. Moreover, for the sake of completeness, results are also compared with a well-assessed PolSAR despeckling filter in the literature.
引用
收藏
页码:1 / 5
页数:5
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