School of Electronic Engineering, Xidian University, Xi'an 710071, China.
IEEE Trans Image Process. 2012 Feb;21(2):469-80. doi: 10.1109/TIP.2011.2161482.
The neighbor-embedding (NE) algorithm for single-image super-resolution (SR) reconstruction assumes that the feature spaces of low-resolution (LR) and high-resolution (HR) patches are locally isometric. However, this is not true for SR because of one-to-many mappings between LR and HR patches. To overcome or at least to reduce the problem for NE-based SR reconstruction, we apply a joint learning technique to train two projection matrices simultaneously and to map the original LR and HR feature spaces onto a unified feature subspace. Subsequently, the k -nearest neighbor selection of the input LR image patches is conducted in the unified feature subspace to estimate the reconstruction weights. To handle a large number of samples, joint learning locally exploits a coupled constraint by linking the LR-HR counterparts together with the K-nearest grouping patch pairs. In order to refine further the initial SR estimate, we impose a global reconstruction constraint on the SR outcome based on the maximum a posteriori framework. Preliminary experiments suggest that the proposed algorithm outperforms NE-related baselines.
基于邻域嵌入 (NE) 的单图像超分辨率 (SR) 重建算法假设低分辨率 (LR) 和高分辨率 (HR) 补丁的特征空间在局部等距。然而,由于 LR 和 HR 补丁之间存在一对多的映射,这种情况在 SR 中并不成立。为了克服或至少减少基于 NE 的 SR 重建中的问题,我们应用联合学习技术同时训练两个投影矩阵,并将原始的 LR 和 HR 特征空间映射到统一的特征子空间。随后,在统一的特征子空间中对输入的 LR 图像补丁进行 k-最近邻选择,以估计重建权重。为了处理大量样本,联合学习通过将 LR-HR 对应物与 K-最近分组补丁对链接起来,局部利用耦合约束。为了进一步细化初始 SR 估计,我们基于最大后验框架对 SR 结果施加全局重建约束。初步实验表明,所提出的算法优于基于 NE 的基线。