LCFormer: linear complexity transformer for efficient image super-resolution

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-08-01 DOI:10.1007/s00530-024-01435-4
Xiang Gao, Sining Wu, Ying Zhou, Fan Wang, Xiaopeng Hu
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Abstract

Recently, Transformer-based methods have made significant breakthroughs for single image super-resolution (SISR) but with considerable computation overheads. In this paper, we propose a novel Linear Complexity Transformer (LCFormer) for efficient image super-resolution. Specifically, since the vanilla SA has quadratic complexity and often ignores potential correlations among different data samples, External Attention (EA) is introduced into Transformer to reduce the quadratic complexity to linear and implicitly considers the correlations across the whole dataset. To improve training speed and performance, Root Mean Square Layer Normalization (RMSNorm) is adopted in the Transformer layer. Moreover, an Efficient Gated Depth-wise-conv Feed-forward Network (EGDFN) is designed by the gate mechanism and depth-wise convolutions in Transformer for feature representation with an efficient implementation. The proposed LCFormer achieves comparable or superior performance to existing Transformer-based methods. However, the computation complexity and GPU memory consumption have been dramatically reduced. Extensive experiments demonstrate that LCFormer achieves competitive accuracy and visual improvements against other state-of-the-art methods and reaches a trade-off between model performance and computation costs.

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LCFormer:用于高效图像超分辨率的线性复杂度变换器
最近,基于变换器的方法在单图像超分辨率(SISR)方面取得了重大突破,但计算开销相当大。在本文中,我们提出了一种新型线性复杂度变换器(LCFormer),用于高效图像超分辨率。具体来说,由于普通的超分辨率算法具有二次复杂性,而且往往会忽略不同数据样本之间的潜在相关性,因此我们在变换器中引入了外部注意力(EA),从而将二次复杂性降低为线性,并隐式地考虑了整个数据集的相关性。为了提高训练速度和性能,转换器层采用了均方根层归一化(RMSNorm)技术。此外,通过门机制和变换器中的深度卷积,设计了一个高效门控深度卷积前馈网络(EGDFN),用于特征表示并高效实现。所提出的 LCFormer 与现有的基于 Transformer 的方法相比,性能相当甚至更优。然而,计算复杂度和 GPU 内存消耗却大幅降低。广泛的实验证明,LCFormer 在精度和视觉效果上的改进与其他最先进的方法相比具有竞争力,并在模型性能和计算成本之间实现了权衡。
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CiteScore
7.20
自引率
4.30%
发文量
567
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