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A Fast and Accurate Super-Resolution Network Using Progressive Residual Learning

机译:使用渐进式残差学习的快速,准确的超分辨率网络

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Single-image super-resolution (SISR) task has witnessed great strides in the past few years with the development of deep learning. However, most existing studies concentrate on exploiting much deeper super-resolution networks, which are not friendly to the constrained computation resources. In this work, a lightweight network using progressive residual learning for SISR (PRLSR) is proposed to address this issue. Specifically, a progressive residual block (PRB) is designed to progressively downsample deep features for reducing the redundancy and obtaining refined features. Simultaneously, a high-frequency preserving module is proposed to lower the detail loss caused by resolution reduction in PRB. Furthermore, a residual learning-based architecture with learnable weights is utilized to extract multilevel features and adaptively adjust the contribution of residual mapping and identity mapping in residual structure to accelerate convergence. Experimental results on four benchmarks show that our PRLSR achieves superior performance over state-of-the-art methods with a significantly decreased computational cost.
机译:随着深度学习的发展,单图像超分辨率(SISR)任务在过去几年中取得了长足进步。但是,大多数现有研究集中在利用更深的超分辨率网络上,这些网络对受限的计算资源不友好。在这项工作中,提出了一种针对SISR(PRLSR)使用渐进式残差学习的轻量级网络,以解决此问题。具体而言,将渐进残差块(PRB)设计为逐步对深度特征进行下采样,以减少冗余并获得精细特征。同时,提出了一种高频保留模块,以降低PRB分辨率降低所引起的细节损失。此外,具有可学习权重的基于残差学习的体系结构可用于提取多级特征,并自适应地调整残差映射和身份映射在残差结构中的作用,以加快收敛速度​​。在四个基准上的实验结果表明,我们的PRLSR与最新技术相比,具有卓越的性能,并且显着降低了计算成本。

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