Image Super-Resolution via Efficient Transformer Embedding Frequency Decomposition With Restart

Yifan Zuo;Wenhao Yao;Yuqi Hu;Yuming Fang;Wei Liu;Yuxin Peng
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Abstract

Recently, transformer-based backbones show superior performance over the convolutional counterparts in computer vision. Due to quadratic complexity with respect to the token number in global attention, local attention is always adopted in low-level image processing with linear complexity. However, the limited receptive field is harmful to the performance. In this paper, motivated by Octave convolution, we propose a transformer-based single image super-resolution (SISR) model, which explicitly embeds dynamic frequency decomposition into the standard local transformer. All the frequency components are continuously updated and re-assigned via intra-scale attention and inter-scale interaction, respectively. Specifically, the attention in low resolution is enough for low-frequency features, which not only increases the receptive field, but also decreases the complexity. Compared with the standard local transformer, the proposed FDRTran layer simultaneously decreases FLOPs and parameters. By contrast, Octave convolution only decreases FLOPs of the standard convolution, but keeps the parameter number unchanged. In addition, the restart mechanism is proposed for every a few frequency updates, which first fuses the low and high frequency, then decomposes the features again. In this way, the features can be decomposed in multiple viewpoints by learnable parameters, which avoids the risk of early saturation for frequency representation. Furthermore, based on the FDRTran layer with restart mechanism, the proposed FDRNet is the first transformer backbone for SISR which discusses the Octave design. Sufficient experiments show our model reaches state-of-the-art performance on 6 synthetic and real datasets. The code and the models are available at https://github.com/catnip1029/FDRNet .
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通过重启高效变压器嵌入频率分解实现图像超分辨率
最近,在计算机视觉领域,基于变压器的骨干网显示出比卷积骨干网更优越的性能。由于全局注意力的复杂度与标记数呈二次方关系,因此在具有线性复杂度的低级图像处理中,总是采用局部注意力。然而,有限的感受野会对性能造成损害。本文受八度卷积的启发,提出了一种基于变压器的单图像超分辨率(SISR)模型,它明确地将动态频率分解嵌入到标准局部变压器中。所有频率分量分别通过尺度内注意力和尺度间交互作用不断更新和重新分配。具体来说,低分辨率下的注意力足以满足低频特征的需要,这不仅增加了感受野,还降低了复杂度。与标准局部变换器相比,拟议的 FDRTran 层同时降低了 FLOP 和参数。相比之下,八度卷积只减少了标准卷积的 FLOPs,但保持了参数数量不变。此外,我们还提出了每更新几个频率就重启一次的机制,即先融合低频和高频,然后再分解特征。这样,就可以通过可学习的参数对特征进行多视角分解,从而避免频率表示过早饱和的风险。此外,基于具有重启机制的 FDRTran 层,所提出的 FDRNet 是首个讨论 Octave 设计的 SISR 变压器骨干网。充分的实验表明,我们的模型在 6 个合成和真实数据集上达到了最先进的性能。代码和模型可在 https://github.com/catnip1029/FDRNet 上获取。
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