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Learned Multimodal Convolutional Sparse Coding for Guided Image Super-Resolution

机译:用于引导图像超分辨率的学习型多模态卷积稀疏编码

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The success of deep learning in various tasks, including solving inverse problems, has triggered the need for designing deep neural networks that incorporate domain knowledge. In this paper, we design a multimodal deep learning architecture for guided image super-resolution, which refers to the problem of super-resolving a low-resolution image with the aid of a high-resolution image of another modality. The proposed architecture is based on a novel deep learning model, obtained by unfolding a proximal method that solves the problem of convolutional sparse coding with side information. We applied the proposed architecture to super-resolve near-infrared images using RGB images as side information. Experimental results report average PSNR gains of up to 2.85 dB against state-of-the-art multimodal deep learning and sparse coding models.
机译:深度学习在包括解决逆问题在内的各种任务中的成功引发了对设计结合领域知识的深度神经网络的需求。在本文中,我们设计了一种用于引导图像超分辨率的多模式深度学习体系结构,该体系结构涉及借助另一种模式的高分辨率图像对低分辨率图像进行超分辨率的问题。所提出的架构基于一种新颖的深度学习模型,该模型是通过展开一种近端方法而获得的,该方法解决了带有边信息的卷积稀疏编码问题。我们将建议的体系结构应用于使用RGB图像作为辅助信息的超分辨近红外图像。实验结果表明,与最新的多模式深度学习和稀疏编码模型相比,平均PSNR增益高达2.85 dB。

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