Hierarchical sparse representation with adaptive dictionaries for image super-resolution

Xuelian Wu, Daiguo Deng, Jianhong Li, Xiaonan Luo, K. Zeng
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Abstract

This paper presents an image hierarchical super-resolution (SR) method with adaptive dictionaries, based on signal sparse representation. It can not only improve image detail quality but also reduce computational cost. Research on the human visual system suggests that our eyes are mainly sensitive to high-frequency contents. Inspired by this observation, we implemented a hierarchical process where an image was decomposed into a detail layer and a base layer. The detail layer is reconstructed through an over-complete dictionary while the base layer is interpolated by bi-cubic. Through these, we can keep the HR details better. Next is how to accelerate while keeping good quality. In our method, adaptive dictionaries are trained by feature clustering. Firstly, we train low dimension sub-dictionaries to reduce time complexity. Secondly, then we apply overlapping feature clustering to the training. Thus dictionaries can be adaptive and more complete. All these can also prevent sub-dictionaries with over strong independence but less compatibility. Besides, initializing the sparse coefficients also plays an important role in our acceleration. Experimental results validate that ours are competitive or even superior in quality than those produced by other methods and our test data indicates substantial reduction in processing time over other similar SR methods.
基于自适应字典的图像超分辨率分层稀疏表示
提出了一种基于信号稀疏表示的自适应字典图像分层超分辨率方法。它不仅可以提高图像的细节质量,还可以降低计算成本。对人类视觉系统的研究表明,我们的眼睛主要对高频内容敏感。受此启发,我们实现了一个分层过程,其中将图像分解为细节层和基础层。细节层采用过完备字典重构,基础层采用双立方插值。通过这些,我们可以更好地保留HR细节。接下来是如何在保持良好质量的同时加速。在我们的方法中,自适应字典是通过特征聚类训练的。首先,我们训练低维子字典来降低时间复杂度。然后将重叠特征聚类应用到训练中。因此,字典可以自适应和更完整。这些都可以防止子字典独立性过强但兼容性较差的问题。此外,初始化稀疏系数对我们的加速也起着重要的作用。实验结果证明,我们的方法在质量上具有竞争力,甚至优于其他方法,我们的测试数据表明,与其他类似的SR方法相比,我们的处理时间大大减少。
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