论文标题

学习正则化和基于强度梯度的忠诚度,以实现单图像超级分辨率

Learning regularization and intensity-gradient-based fidelity for single image super resolution

论文作者

Liang, Hu, Zhao, Shengrong

论文摘要

如何为单像超级分辨率提取更多和有用的信息是一个势在必行且困难的问题。基于学习的方法是执行此类任务的代表性方法。但是,结果并不那么稳定,因为训练数据和测试数据之间可能存在很大的差异。基于正则化的方法可以有效地利用观察的自我信息。但是,基于正则化的方法中使用的降解模型只是考虑了强度空间中的降解。它可能不会很好地重建图像,因为不考虑各种特征空间中的降解反射。在本文中,我们首先研究了图像降解进度,并在强度和梯度空间中建立降解模型。因此,为重建建立了全面的数据一致性约束。因此,可以从观察到的数据中提取更多有用的信息。其次,正则化项是通过设计的对称残差深神经网络来学到的。它可以从预定义的数据集中搜索类似的外部信息,以避免人工趋势。最后,提出的保真度项和设计的正则化项嵌入了正规化框架中。此外,基于半季节拆分方法和伪结合方法开发了一种优化方法。实验结果表明,与所提出的方法相对应的主观和客观度量比通过比较方法获得的方法更好。

How to extract more and useful information for single image super resolution is an imperative and difficult problem. Learning-based method is a representative method for such task. However, the results are not so stable as there may exist big difference between the training data and the test data. The regularization-based method can effectively utilize the self-information of observation. However, the degradation model used in regularization-based method just considers the degradation in intensity space. It may not reconstruct images well as the degradation reflections in various feature space are not considered. In this paper, we first study the image degradation progress, and establish degradation model both in intensity and gradient space. Thus, a comprehensive data consistency constraint is established for the reconstruction. Consequently, more useful information can be extracted from the observed data. Second, the regularization term is learned by a designed symmetric residual deep neural-network. It can search similar external information from a predefined dataset avoiding the artificial tendency. Finally, the proposed fidelity term and designed regularization term are embedded into the regularization framework. Further, an optimization method is developed based on the half-quadratic splitting method and the pseudo conjugate method. Experimental results indicated that the subjective and the objective metric corresponding to the proposed method were better than those obtained by the comparison methods.

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