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PSMD-Net: A Novel Pan-Sharpening Method Based on a Multiscale Dense Network

机译:PSMD-NET:一种基于多尺度密度网络的泛锐化方法

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Pan sharpening is used to fuse a low-resolution multispectral (MS) image and a high-resolution panchromatic (PAN) image to obtain a high-resolution MS image. This article proposes PSMD-Net, an end-to-end pan-sharpening method based on a multi-scale dense network. A shallow feature extraction layer (SFEL) extracts the shallow features from the original images, and these are used as an input to a global dense feature fusion (GDFF) network to learn the global features for image reconstruction. A multiscale dense block (MDB) is designed to fully extract the spatial and spectral information from the shallow features in the GDFF network. In the proposed network, multiple MDBs are stacked to extract rich, multi-scale dense hierarchical features, and a global dense connection (GDC) is designed to allow direct connections from the state of the current MDB to all subsequent MDBs to extract more advanced features. The extracted hierarchical features are sent to the global feature fusion layer (GFFL) to adaptively learn the global features for image reconstruction. Finally, global residual learning (GRL) is adopted to force the network to pay more attention to the changing part of the image. We perform experiments on simulated and real data from WorldView-2 and WorldView-3 satellites. Visual and quantitative assessment results demonstrate that PSMD-Net yields higher-resolution fusion images than the state-of-the-art methods.
机译:PAN锐化用于熔化低分辨率多光谱(MS)图像和高分辨率的Panchromic(PAN)图像以获得高分辨率MS图像。本文提出了PSMD-NET,基于多尺度密集网络的端到端泛锐化方法。浅特征提取层(SFEL)提取原始图像的浅特征,这些浅特征被用作全局密集特征融合(GDFF)网络的输入,以学习图像重建的全局特征。多尺度密集块(MDB)旨在充分从GDFF网络中的浅功能中提取空间和光谱信息。在所提出的网络中,多个MDB被堆叠以提取丰富的多尺寸密集的分层特征,并且旨在允许从当前MDB的状态直接连接到所有后续MDB以提取更高级的功能。提取的分层特征被发送到全局特征融合层(GFF1),以便自适应地学习图像重建的全局特征。最后,采用全局剩余学习(GRL)迫使网络更加关注图像的变化部分。我们从WorldView-2和WorldView-3卫星进行模拟和真实数据进行实验。视觉和定量评估结果表明,PSMD-Net产生比现有技术的方法更高分辨率的融合图像。

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