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Multi-scale convolutional neural networks for cloud segmentation

机译:云分割多尺度卷积神经网络

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Cloud detection is a fundamental pre-processing task for high resolution satellite images, where the presence or the absence of the cloud plays an important role in making a decision for further processing. Existing techniques are based on per-pixel classification for region segmentation. However, due to the similarity of the features with other patterns like ice or snow, it may lead to misclassification. Moreover, cloud detection imposes the detection of cloud shadow as well since it also covers land areas. In order to come up with an efficient technique to tackle the complexity of pattern diversity, we exploit the recent advances in machine learning by designing and training a deep convolutional neural network model (ConvNet) based on multi-scale feature learning. Our proposed technique claims that different types of features can be learned at different scales to discriminate between image patterns. We chose two publicly available datasets for training. First, the 38-Cloud dataset was annotated as cloudy and non-cloudy classes. Second, the SPARCS (Spatial Procedures for Automated Removal of Cloud and Shadow) dataset with seven classes including cloud, ice/snow, and shadow. Both datasets contain images with four bands (R: Red, G: Green, B: Blue, Nir: Near Infrared), which we use as inputs of the ConvNet model for training and testing. The experimental results show that our proposed method can effectively detect clouds in complex scenes.
机译:云检测是高分辨率卫星图像的基本预处理任务,其中云的存在或不存在在做出进一步处理方面发挥着重要作用。现有技术基于区域分割的每个像素分类。然而,由于具有像冰或雪这样的其他模式的特征的相似性,可能导致错误分类。此外,云检测施加了云阴影的检测,因为它还涵盖了陆地区域。为了提出一种有效的技术来解决模式多样性的复杂性,我们通过基于多尺度特征学习设计和培训深度卷积神经网络模型(Convnet)来利用机器学习的最新进展。我们所提出的技术要求在不同的尺度上学习不同类型的特征以区分图像模式。我们选择了两个公开的数据集进行培训。首先,38云数据集被注释为多云和非阴天类。其次,SPARCS(用于自动删除云和影子的空间程序)数据集,具有七个阶级,包括云,冰/雪和阴影。两个数据集包含有四个频段的图像(R:Red,G:Green,B:Blue,Nir:近红外线),我们用作ConvNet模型的培训和测试的输入。实验结果表明,我们的提出方法可以有效地检测复杂场景中的云。

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