Rethinking Image Super Resolution from Long-Tailed Distribution Learning Perspective

Yuanbiao Gou, Peng Hu, Jiancheng Lv, Hongyuan Zhu, Xiaocui Peng
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引用次数: 1

Abstract

Existing studies have empirically observed that the resolution of the low-frequency region is easier to enhance than that of the high-frequency one. Although plentiful works have been devoted to alleviating this problem, little understanding is given to explain it. In this paper, we try to give a feasible answer from a machine learning perspective, i.e., the twin fitting problem caused by the long-tailed pixel distribution in natural images. With this explanation, we reformulate image super resolution (SR) as a long-tailed distribution learning problem and solve it by bridging the gaps of the problem between in low- and high-level vision tasks. As a result, we design a long-tailed distribution learning solution, that rebalances the gradients from the pixels in the low- and high-frequency region, by introducing a static and a learnable structure prior. The learned SR model achieves better balance on the fitting of the low- and high-frequency region so that the overall performance is improved. In the experiments, we evaluate the solution on four CNN- and one Transformer-based SR models w.r.t. six datasets and three tasks, and experimental results demonstrate its superiority.
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从长尾分布学习的角度重新思考图像超分辨率
已有的研究经验表明,低频区域的分辨率比高频区域的分辨率更容易增强。尽管有大量的研究致力于缓解这一问题,但对其解释的理解却很少。在本文中,我们试图从机器学习的角度给出一个可行的答案,即自然图像中由于长尾像素分布导致的孪生拟合问题。在这种解释下,我们将图像超分辨率(SR)重新定义为一个长尾分布学习问题,并通过弥合低阶和高阶视觉任务之间的差距来解决它。因此,我们设计了一个长尾分布学习解决方案,通过引入静态和可学习结构先验,重新平衡低频和高频区域像素的梯度。学习到的SR模型在低频和高频区域的拟合上达到了更好的平衡,从而提高了整体性能。在6个数据集、3个任务的4个基于CNN的SR模型和1个基于transformer的SR模型上进行了实验,实验结果表明了该方法的优越性。
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