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Fast Single-Image Super-Resolution Via Tangent Space Learning of High-Resolution-Patch Manifold

机译:通过高分辨率补丁流形的切线空间学习实现快速单图像超分辨率

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摘要

Manifold assumption has been used in example-based super-resolution (SR) reconstruction from a single frame. Previous manifold-based SR approaches (more generally example-based SR) mainly focus on analyzing the co-occurrence properties of low-resolution and high-resolution patches. This paper develops a novel single-image SR approach based on linear approximation of the high-resolution-patch space using a sparse subspace clustering algorithm. The approach exploits the underlying high-resolution patches nonlinear space by considering it as a low-dimensional manifold in a high-dimensional Euclidean space, and by considering each training high-resolution-patch as a sample from the manifold. We utilize the sparse subspace clustering algorithm to create the set of low-dimensional linear spaces that are considered, approximately, as tangent spaces at the high-resolution samples. Furthermore, we consider and analyze each tangent space as one point in a Grassmann manifold, which helps to compute geodesic pairwise distances among these tangent spaces. An optimal subset of these tangent spaces is then selected using a min-max algorithm. The optimal subset reduces the computational cost in comparison with using the full set of tangent spaces while still preserving the quality of the high-resolution image reconstruction. In addition, we perform hierarchical clustering on the optimal subset based on the geodesic distance, which helps to further achieve much faster SR algorithm. We also analytically prove the validity of the geodesic distance based clustering under the proposed framework. A comparison of the obtained results with other related methods in both high-resolution image quality and computational complexity clearly indicates the viability of the proposed framework.
机译:流形假设已用于从单个帧进行基于示例的超分辨率(SR)重建。先前的基于流形的SR方法(更通常是基于示例的SR)主要集中于分析低分辨率和高分辨率补丁的共现特性。本文基于稀疏子空间聚类算法,基于高分辨率补丁空间的线性逼近,开发了一种新颖的单图像SR方法。该方法通过将非线性高分辨率空间视为高维欧几里德空间中的低维流形,并通过将每个训练的高分辨率补丁视为来自流形的样本,来开发潜在的高分辨率补丁非线性空间。我们利用稀疏子空间聚类算法来创建一组低维线性空间,这些空间大约被视为高分辨率样本处的切线空间。此外,我们将每个切线空间视为格拉斯曼流形中的一个点并进行分析,这有助于计算这些切线空间之间的测地线成对距离。然后使用最小-最大算法选择这些切线空间的最佳子集。与使用完整的切线空间集相比,最佳子集减少了计算成本,同时仍保留了高分辨率图像重建的质量。此外,我们基于测地距离对最佳子集执行分层聚类,这有助于进一步实现更快的SR算法。我们还分析地证明了在所提出的框架下基于测地距离的聚类的有效性。将获得的结果与其他相关方法进行的高分辨率图像质量和计算复杂度的比较清楚地表明了所提出框架的可行性。

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