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A cloud detection algorithm for satellite imagery based on deep learning

机译:基于深度学习的卫星图像云检测算法

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Reliable detection of clouds is a critical pre-processing step in optical satellite based remote sensing. Currently, most methods are based on classifying invidual pixels from their spectral signatures, therefore they do not incorporate the spatial patterns. This often leads to misclassifications of highly reflective surfaces, such as human made structures or snow/ice. Multi-temporal methods can be used to alleviate this problem, but these methods introduce new problems, such as the need of a cloud-free image of the scene. In this paper, we introduce the Remote Sensing Network (RS-Net), a deep learning model for detection of clouds in optical satellite imagery, based on the U-net architecture. The model is trained and evaluated using the Landsat 8 Biome and SPARCS datasets, and it shows state-of-the-art performance, especially over biomes with hardly distinguishable scenery, such as clouds over snowy and icy regions. In particular, the performance of the model that uses only the RGB bands is significantly improved, showing promising results for cloud detection with smaller satellites with limited multi-spectral capabilities. Furthermore, we show how training the RS-Net models on data from an existing cloud masking method, which are treated as noisy data, leads to increased performance compared to the original method. This is validated by using the Fmask algorithm to annotate the Landsat 8 datasets, and then use these annotations as training data for regularized RS-Net models, which then show improved performance compared to the Fmask algorithm. Finally, the classification time of a full Landsat 8 product is 18.0 +/- 2.4 s for the largest RS-Net model, thereby making it suitable for production environments.
机译:可靠地检测云是基于光学卫星的遥感的关键预处理步骤。目前,大多数方法基于从它们的光谱签名进行分类的势像素,因此它们不包含空间模式。这通常导致高度反射表面的错误分类,例如人造结构或雪/冰。多时间方法可用于缓解此问题,但这些方法引入了新的问题,例如需要无云图像的场景。在本文中,我们介绍了遥感网络(RS-NET),是一种基于U-Net架构的光学卫星图像中云的深层学习模型。使用Landsat 8生物群组和SPARCS数据集进行培训和评估该模型,并且显示出最先进的性能,特别是在具有难以区分的风景的生物群体,例如云层和冰冷地区的云。特别地,仅使用RGB频带的模型的性能得到了显着的改进,显示了具有具有有限多光谱能力的较小卫星的云检测的有希望的结果。此外,我们展示了如何从现有的云掩蔽方法培训数据上的数据模型,这些方法被视为嘈杂的数据,导致与原始方法相比的性能提高。通过使用FMask算法验证这一点来验证Landsat 8数据集,然后使用这些注释作为正则化RS-Net模型的培训数据,然后与FMask算法相比,该培训数据显示了改进的性能。最后,最大RS-Net模型的完整Landsat 8产品的分类时间为18.0 +/- 2.4 s,从而使其适用于生产环境。

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