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SUPER-RESOLUTION FOR SENTINEL-2 IMAGES

机译:Sentinel-2图像的超级分辨率

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Obtaining Sentinel-2 imagery of higher spatial resolution than the native bands while ensuring that output imagery preserves the original radiometry has become a key issue since the deployment of Sentinel-2 satellites. Several studies have been carried out on the upsampling of 20 m and 60 m Sentinel-2 bands to 10 meters resolution taking advantage of 10 m bands. However, how to super-resolve 10 m bands to higher resolutions is still an open problem. Recently, deep learning-based techniques has become a de facto standard for single-image super-resolution. The problem is that neural network learning for super-resolution requires image pairs at both the original resolution (10 m in Sentinel-2) and the target resolution (e.g., 5 m or 2.5 m). Since there is no way to obtain higher resolution images for Sentinel-2, we propose to consider images from others sensors having the greatest similarity in terms of spectral bands, which will be appropriately pre-processed. These images, together with Sentinel-2 images, will form our training set. We carry out several experiments using state-of-the-art Convolutional Neural Networks for single-image super-resolution showing that this methodology is a first step toward greater spatial resolution of Sentinel-2 images.
机译:获取比本机频段更高空间分辨率的Sentinel-2图像,同时确保输出图像保留原始辐射测定的原始辐射测定,自Sentinel-2卫星部署以来已成为关键问题。在20米和60米的哨声-2频段的上采样为10米的分辨率上进行了几项研究,可利用10米频段。但是,如何超级解析10米频段到更高的分辨率仍然是一个开放的问题。最近,基于深度学习的技术已经成为单图像超分辨率的事实标准。问题是,用于超分辨率的神经网络学习需要在原始分辨率(Sentinel-2中的10m)和目标分辨率(例如,5μm或2.5米)的图像对。由于没有办法获得Sentinel-2的更高分辨率图像,因此我们建议考虑来自在频谱频带方面具有最大相似性的传感器的图像,这将适当地预处理。这些图像与Sentinel-2图像一起形成我们的训练集。我们使用最先进的卷积神经网络对单图像超分辨率进行了几个实验,表明该方法是朝向哨落-2图像的更大空间分辨率的第一步。

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