In practice, images can contain different amounts of noise for different color channels, which is not acknowledged by existing super-resolution approaches. In this paper, we propose to super-resolve noisy color images by considering the color channels jointly. Noise statistics are blindly estimated from the input low-resolution image and are used to assign different weights to different color channels in the data cost. Implicit low-rank structure of visual data is enforced via nuclear norm minimization in association with adaptive weights, which is added as a regularization term to the cost. Additionally, multi-scale details of the image are added to the model through another regularization term that involves projection onto PCA basis, which is constructed using similar patches extracted across different scales of the input image. The results demonstrate the super-resolving capability of the approach in real scenarios.
翻译:在实践中,图像可以包含不同颜色频道不同数量的噪音,但现有的超分辨率方法并不承认这一点。 在本文中,我们提议通过共同考虑颜色频道来超级解析噪音的颜色图像。 噪音统计数据从输入的低分辨率图像中盲目估算,用于在数据成本中给不同颜色频道分配不同重量。 视觉数据隐含的低级别结构通过核规范最小化与适应性重量相结合的方式实施,并将其作为一个常规化术语添加到成本中。 此外,图像的多尺度细节通过另一个正规化术语添加到模型中,其中涉及向五氯苯甲醚基础投放,该常规基础是使用输入图像不同规模的类似补丁构建的。 结果表明,在真实情景中,该方法的超分辨率能力是超强的。