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Learning Multiple Linear Mappings for Efficient Single Image Super-Resolution

机译:学习多个线性映射以实现高效的单图像超分辨率

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摘要

Example learning-based superresolution (SR) algorithms show promise for restoring a high-resolution (HR) image from a single low-resolution (LR) input. The most popular approaches, however, are either time- or space-intensive, which limits their practical applications in many resource-limited settings. In this paper, we propose a novel computationally efficient single image SR method that learns multiple linear mappings (MLM) to directly transform LR feature subspaces into HR subspaces. In particular, we first partition the large nonlinear feature space of LR images into a cluster of linear subspaces. Multiple LR subdictionaries are then learned, followed by inferring the corresponding HR subdictionaries based on the assumption that the LR–HR features share the same representation coefficients. We establish MLM from the input LR features to the desired HR outputs in order to achieve fast yet stable SR recovery. Furthermore, in order to suppress displeasing artifacts generated by the MLM-based method, we apply a fast nonlocal means algorithm to construct a simple yet effective similarity-based regularization term for SR enhancement. Experimental results indicate that our approach is both quantitatively and qualitatively superior to other application-oriented SR methods, while maintaining relatively low time and space complexity.
机译:示例的基于学习的超分辨率(SR)算法显示了从单个低分辨率(LR)输入恢复高分辨率(HR)图像的希望。但是,最流行的方法是时间密集或空间密集的,这限制了它们在许多资源受限的环境中的实际应用。在本文中,我们提出了一种新颖的计算有效的单图像SR方法,该方法学习了多个线性映射(MLM),可以将LR特征子空间直接转换为HR子空间。特别是,我们首先将LR图像的大型非线性特征空间划分为线性子空间的簇。然后学习多个LR子词典,然后基于LR–HR特征共享相同表示系数的假设,推断相应的HR子词典。我们建立从输入LR功能到所需HR输出的MLM,以实现快速而稳定的SR恢复。此外,为了抑制由基于MLM的方法生成的令人不快的伪像,我们应用了快速的非局部均值算法来构建简单而有效的基于相似度的SR增强正则化项。实验结果表明,我们的方法在数量和质量上都优于其他面向应用程序的SR方法,同时保持相对较低的时间和空间复杂性。

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