基于生成对抗网络的哨兵2号单幅多光谱遥感影像云污染区信息重建模型研究

Do Thi Nhung, Pham Vu Dong, Bui Quang Thanh, Pham Van Manh
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引用次数: 1

摘要

在光学遥感分析中,云和云影会造成信息丢失。在东南亚地区,特别是越南,Sentinel-2卫星图像重访周期短,观测结果容易受到云和云影的污染。传统的除云方法需要近日期的多时相数据,以避免季节性的土地覆盖变化。本文提出了一种融合深度卷积神经网络(DCNN)和生成对抗网络(GAN)的方法。这个机器学习模型估计了Sentinel-2单张图像上云污染地区的信息损失。结果表明,对于云层覆盖率低于25%的图像,我们的模型可以重建出与真实清晰图像相比,PSNR为25 ~ 40 dB, SSIM为0.86 ~ 0.93的无云图像。另一方面,当云量覆盖率达到40%时,云和云影区的分布对模型性能的影响较大。通过对DCNN和GAN的研究,我们的方法被证明是一种去除低、中速率云雾图像的有效工具,丰富了环境监测的清晰光学遥感数据源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study Model for Information Reconstruction on Cloud Contaminated Area for Single Multispectral Remote Sensing Sentinel-2 Imagery using Generative Adversarial Network
Cloud and cloud shadow cause information loss in optical remote sensing analysis. South East Asia, especially Vietnam, Sentinel-2 imagery has short re-visit cycle and observations tend to be contaminated with cloud and cloud shadow. Traditional cloud removal methods require close date multi-temporal data to avoid seasonal land cover changes. In this study, a method of integrating Deep Convolutional Neural Networks (DCNN) and Generative Adversarial Network (GAN) was proposed. This machine learning model estimates the information loss over cloud contaminated areas on a single Sentinel-2 image. The results show that for images with cloud cover rate under 25%, our model can reconstruct cloudless images with PSNR (25 – 40 dB) and SSIM (0.86 – 0.93) compared to real clear images. On the other hand, with cloud cover rate up to 40%, the model performance will be affected heavily by the distribution of cloud and cloud shadow areas. By investigating DCNN and GAN, our method has proven to be an effective tool to remove cloudy images with low and medium rates, which enriches the clear optical remote sensing data sources for environment monitoring.  
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