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首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >GLOBAL CONTEXT AIDED SEMANTIC SEGMENTATION FOR CLOUD DETECTION OF REMOTE SENSING IMAGES
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GLOBAL CONTEXT AIDED SEMANTIC SEGMENTATION FOR CLOUD DETECTION OF REMOTE SENSING IMAGES

机译:遥感图像云检测的全局上下文辅助语义分割

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摘要

Cloud detection is a vital preprocessing step for remote sensing image applications, which has been widely studied through Convolutional Neural Networks (CNNs) in recent years. However, the available CNN-based works only extract local/non-local features by stacked convolution and pooling layers, ignoring global contextual information of the input scenes. In this paper, a novel segmentation-based network is proposed for cloud detection of remote sensing images. We add a multi-class classification branch to a U-shaped semantic segmentation network. Through the encoder-decoder architecture, pixelwise classification of cloud, shadow and landcover can be obtained. Besides, the multi-class classification branch is built on top of the encoder module to extract global context by identifying what classes exist in the input scene. Linear representation encoded global contextual information is learned in the added branch, which is to be combined with featuremaps of the decoder and can help to selectively strengthen class-related features or weaken class-unrelated features at different scales. The whole network is trained and tested in an end-to-end fashion. Experiments on two Landsat-8 cloud detection datasets show better performance than other deep learning methods, which finally achieves 90.82% overall accuracy and 0.6992 mIoU on the SPARCS dataset, demonstrating the effectiveness of the proposed framework for cloud detection in remote sensing images.
机译:云检测是遥感图像应用的重要预处理步骤,近年来已通过卷积神经网络(CNNS)广泛研究。但是,可用的基于CNN的作品仅通过堆叠卷积和池塘层提取本地/非本地功能,忽略输入场景的全局上下文信息。本文提出了一种新的基于分段的网络,用于遥感图像的云检测。我们将多级分类分支添加到U形语义分段网络。通过编码器 - 解码器架构,可以获得云,阴影和覆盖层的PixelWise分类。此外,多级分类分支建立在编码器模块的顶部,以通过识别输入场景中存在的类来提取全局上下文。线性表示编码的全局上下文信息在添加的分支中学习,该分支是与解码器的特派团组合,并且可以帮助选择性地加强与不同尺度的类相关的特征或削弱类无关的功能。整个网络培训并以端到端的方式进行测试。两个Landsat-8云检测数据集的实验表现出比其他深度学习方法更好的性能,最终在SPARCS数据集中实现了90.82%的总体准确性和0.6992 Miou,展示了遥感图像中提出的云检测框架的有效性。

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