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Super-resolution of Sentinel-2 images: Learning a globally applicable deep neural network

机译:Sentinel-2图像的超分辨率:学习全球适用的深度神经网络

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The Sentinel-2 satellite mission delivers multi-spectral imagery with 13 spectral bands, acquired at three different spatial resolutions. The aim of this research is to super-resolve the lower-resolution (20 m and 60 m Ground Sampling Distance - GSD) bands to 10 m GSD, so as to obtain a complete data cube at the maximal sensor resolution. We employ a state-of-the-art convolutional neural network (CNN) to perform end-to-end upsampling, which is trained with data at lower resolution, i.e., from 40 - 20 m, respectively 360 - 60 m GSD. In this way, one has access to a virtually infinite amount of training data, by downsampling real Sentinel-2 images. We use data sampled globally over a wide range of geographical locations, to obtain a network that generalises across different climate zones and land-cover types, and can super-resolve arbitrary Sentinel-2 images without the need of retraining. In quantitative evaluations (at lower scale, where ground truth is available), our network, which we call DSen2, outperforms the best competing approach by almost 50% in RMSE, while better preserving the spectral characteristics. It also delivers visually convincing results at the full 10 m GSD.
机译:Sentinel-2卫星任务可提供以三种不同空间分辨率采集的具有13个光谱带的多光谱图像。这项研究的目的是将较低分辨率(20 m和60 m地面采样距离-GSD)频带超分辨为10 m GSD,以便在最大传感器分辨率下获得完整的数据立方体。我们使用最先进的卷积神经网络(CNN)进行端到端的上采样,并使用较低分辨率的数据进行训练,即从40-> 20 m分别为360-> 60 m GSD 。这样,通过对真实的Sentinel-2图像进行下采样,就可以访问几乎无限量的训练数据。我们使用在广泛的地理位置范围内进行全球采样的数据,以获得可以跨不同气候区域和土地覆盖类型进行概括的网络,并且可以超分辨任意Sentinel-2图像而无需进行重新训练。在定量评估中(在较低的规模上,如果存在地面检验的话),我们称为DSen2的网络在RMSE中优于最佳竞争方法近50%,同时更好地保留了光谱特征。它还在整个10 m GSD上提供了令人信服的视觉效果。

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