Augmented Coupled Dictionary Learning for Image Super-Resolution

M. Rushdi, J. Ho
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引用次数: 9

Abstract

Recent approaches in image super-resolution suggest learning dictionary pairs to model the relationship between low-resolution and high-resolution image patches with sparsity constraints on the patch representation. Most of the previous approaches in this direction assume for simplicity that the sparse codes for a low-resolution patch are equal to those of the corresponding high-resolution patch. However, this invariance assumption is not quite accurate especially for large scaling factors where the optimal weights and indices of representative features are not fixed across the scaling transformation. In this paper, we propose an augmented coupled dictionary learning scheme that compensates for the inaccuracy of the invariance assumption. First, we learn a dictionary for the low-resolution image space. Then, we compute an augmented dictionary in the high-resolution image space where novel augmented dictionary atoms are inferred from the training error of the low-resolution dictionary. For a low-resolution test image, the sparse codes of the low-resolution patches and the lowresolution dictionary training error are combined with the trained high-resolution dictionary to produce a high-resolution image. Our experimental results compare favourably with the non-augmented scheme.
图像超分辨率增强耦合字典学习
最近的图像超分辨率方法建议学习字典对来模拟低分辨率和高分辨率图像补丁之间的关系,并对补丁表示进行稀疏性约束。为了简单起见,之前的大多数方法都假设低分辨率补丁的稀疏编码等于相应的高分辨率补丁的稀疏编码。然而,这种不变性假设并不十分准确,特别是对于大型缩放因子,其中代表性特征的最优权重和指标在整个缩放变换中不是固定的。在本文中,我们提出了一种增强型耦合字典学习方案来补偿不变性假设的不准确性。首先,我们学习低分辨率图像空间的字典。然后,我们在高分辨率图像空间中计算增广字典,从低分辨率字典的训练误差中推断出新的增广字典原子。对于低分辨率测试图像,将低分辨率补丁的稀疏编码和低分辨率字典训练误差与训练好的高分辨率字典相结合,生成高分辨率图像。我们的实验结果与非增广方案比较好。
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