Han Yulan, Zhao Yongping, Wang Qisong
Department of Automatic Test and Control, Harbin Institute of Technology, Harbin, Heilongjiang, China.
PLoS One. 2017 Jul 31;12(7):e0182165. doi: 10.1371/journal.pone.0182165. eCollection 2017.
In this study, we address the problem of noisy image super-resolution. Noisy low resolution (LR) image is always obtained in applications, while most of the existing algorithms assume that the LR image is noise-free. As to this situation, we present an algorithm for noisy image super-resolution which can achieve simultaneously image super-resolution and denoising. And in the training stage of our method, LR example images are noise-free. For different input LR images, even if the noise variance varies, the dictionary pair does not need to be retrained. For the input LR image patch, the corresponding high resolution (HR) image patch is reconstructed through weighted average of similar HR example patches. To reduce computational cost, we use the atoms of learned sparse dictionary as the examples instead of original example patches. We proposed a distance penalty model for calculating the weight, which can complete a second selection on similar atoms at the same time. Moreover, LR example patches removed mean pixel value are also used to learn dictionary rather than just their gradient features. Based on this, we can reconstruct initial estimated HR image and denoised LR image. Combined with iterative back projection, the two reconstructed images are applied to obtain final estimated HR image. We validate our algorithm on natural images and compared with the previously reported algorithms. Experimental results show that our proposed method performs better noise robustness.
在本研究中,我们解决了有噪声图像超分辨率的问题。在实际应用中总是会获取到有噪声的低分辨率(LR)图像,而大多数现有算法都假定LR图像是无噪声的。针对这种情况,我们提出了一种有噪声图像超分辨率算法,该算法能够同时实现图像超分辨率和去噪。并且在我们方法的训练阶段,LR示例图像是无噪声的。对于不同的输入LR图像,即使噪声方差不同,字典对也无需重新训练。对于输入的LR图像块,通过对相似的高分辨率(HR)示例块进行加权平均来重建相应的HR图像块。为了降低计算成本,我们使用学习到的稀疏字典的原子作为示例,而不是原始的示例块。我们提出了一种距离惩罚模型来计算权重,该模型能够同时对相似原子进行二次筛选。此外,去除平均像素值的LR示例块也用于学习字典,而不仅仅是它们的梯度特征。基于此,我们可以重建初始估计的HR图像和去噪后的LR图像。结合迭代反投影,将这两个重建图像应用于获得最终估计的HR图像。我们在自然图像上验证了我们的算法,并与先前报道的算法进行了比较。实验结果表明,我们提出的方法具有更好的噪声鲁棒性。