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Multi-sensor cloud and cloud shadow segmentation with a convolutional neural network

机译:具有卷积神经网络的多传感器云和云阴影分割

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摘要

Cloud and cloud shadow segmentation is a crucial pre-processing step for any application that uses multi spectral satellite images. In particular, disaster related applications (e.g., flood monitoring or rapid damage mapping), which are highly time- and data-critical, require methods that produce accurate cloud and cloud shadow masks in short time while being able to adapt to large variations in the target domain (induced by atmospheric conditions, different sensors, scene properties, etc.). In this study, we propose a data-driven approach to semantic segmentation of cloud and cloud shadow in single date images based on a modified U-Net convolutional neural network that aims to fulfil these requirements. We train the network on a global database of Landsat OLI images for the segmentation of five classes ("shadow", "cloud", "water", "land" and "snow/ice"). We compare the results to state-of-the-art methods, proof the model's generalization ability across multiple satellite sensors (Landsat TM, Landsat ETM+, Landsat OLI and Sentinel-2) and show the influence of different training strategies and spectral band combinations on the performance of the segmentation. Our method consistently outperforms Fmask and a traditional Random Forest classifier on a globally distributed multi-sensor test dataset in terms of accuracy, Cohen's Kappa coefficient, Dice coefficient and inference speed. The results indicate that a reduced feature space composed solely of red, green, blue and near-infrared bands already produces good results for all tested sensors. If available, adding shortwave-infrared bands can increase the accuracy. Contrast and brightness augmentations of the training data further improve the segmentation performance. The best performing U-Net model achieves an accuracy of 0.89, Kappa of 0.82 and Dice coefficient of 0.85, while running the inference over 896 test image tiles with 44.8 s/megapixel (2.8 s/megapixel on GPU). The Random Forest classifier reaches an accuracy
机译:云和云阴影分割是用于使用多谱卫星图像的任何应用程序的重要预处理步骤。特别地,灾害相关的应用程序(例如,洪水监测或快速损坏映射),这是高度时间和数据关键的,需要在短时间内产生准确的云和云阴影面罩,同时能够适应大的变化目标域(由大气条件,不同的传感器,场景属性等引起)。在本研究中,我们提出了一种基于修改的U-Net卷积神经网络的单日图像中云和云阴影的语义分割数据驱动方法,旨在满足这些要求。我们在全球数据库上培训网络,以便分割五类(“阴影”,“云”,“水”,“土地”和“雪/冰”)。我们将结果与最先进的方法进行比较,证明模型跨多个卫星传感器的泛化能力(Landsat TM,Landsat ETM +,Landsat Oli和Sentinel-2),并显示不同培训策略和光谱频段组合的影响分割的性能。我们的方法在准确度,Cohen的kappa系数,骰子系数和推广速度方面始终如一地优于FMASK和传统的随机林分类器。结果表明,仅具有红色,绿色,蓝色和近红外频带组成的减少的特征空间已经为所有测试的传感器产生了良好的效果。如果可用,则添加短波红外频带可以提高精度。对比度和亮度增强培训数据进一步提高了分割性能。表现最佳的U-Net模型实现了0.89,κ0.82的精度,骰子系数为0.85,同时使用44.8 s / megapixel(GPU上的2.8 s / megapixel的测试图像瓦片超过896个测试图像瓦片。随机林分类器达到准确性

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