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Dual-Geometric Neighbor Embedding for Image Super Resolution With Sparse Tensor

机译:具有稀疏张量的图像超分辨率的双几何邻域嵌入

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摘要

Neighbors embedding (NE) technology has proved its efficiency in single image super resolution (SISR). However, image patches do not strictly follow the similar structure in the low-resolution and high-resolution spaces, consequently leading to a bias to the image restoration. In this paper, considering that patches are a set of data with multiview characteristics and spatial organization, we advance a dual-geometric neighbor embedding (DGNE) approach for SISR. In DGNE, multiview features and local spatial neighbors of patches are explored to find a feature-spatial manifold embedding for images. We adopt a geometrically motivated assumption that for each patch there exists a small neighborhood in which only the patches that come from the same feature-spatial manifold, will lie approximately in a low-dimensional affine subspace formulated by sparse neighbors. In order to find the sparse neighbors, a tensor-simultaneous orthogonal matching pursuit algorithm is advanced to realize a joint sparse coding of feature-spatial image tensors. Some experiments are performed on realizing a 3X amplification of natural images, and the recovered results prove its efficiency and superiority to its counterparts.
机译:邻居嵌入(NE)技术已证明其在单图像超分辨率(SISR)中的效率。但是,图像块在低分辨率和高分辨率空间中并不严格遵循类似的结构,因此导致对图像恢复的偏见。在本文中,考虑到小块是具有多视图特征和空间组织的数据集,我们提出了一种用于SISR的双几何邻居嵌入(DGNE)方法。在DGNE中,探索了多视图特征和补丁的局部空间邻居,以找到图像的特征空间流形嵌入。我们采用基于几何的假设,即对于每个面片,都存在一个小的邻域,在该邻域中,只有来自相同特征空间流形的面片将大约位于稀疏邻居所形成的低维仿射子空间中。为了找到稀疏的邻居,提出了一种张量同时正交匹配追踪算法,以实现特征空间图像张量的联合稀疏编码。在实现自然图像3倍放大方面进行了一些实验,恢复的结果证明了其效率和优越性。

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