LiNet:用于图像超分辨率的轻量级网络

Armin Mehri, P. B. Ardakani, A. Sappa
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引用次数: 2

摘要

本文提出了一种新的轻量级网络LiNet,它提高了轻量级超分辨率的技术效率,并且在网络参数数量和操作方面近似于非常大型和昂贵的网络。所提出的体系结构允许网络通过多个链接避免低级信息来学习更抽象的属性。LiNet引入了一个紧凑的密集模块,它包含一组内部和外部块,以有效地提取有意义的信息,在上采样阶段之前更好地利用多层次表示,并允许网络内有效的信息和梯度流。在基准数据集上的实验表明,所提出的LiNet相对于最先进的轻量级方法取得了良好的性能。
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LiNet: A Lightweight Network for Image Super Resolution
This paper proposes a new lightweight network, LiNet, that enhancing technical efficiency in lightweight super resolution and operating approximately like very large and costly networks in terms of number of network parameters and operations. The proposed architecture allows the network to learn more abstract properties by avoiding low-level information via multiple links. LiNet introduces a Compact Dense Module, which contains set of inner and outer blocks, to efficiently extract meaningful information, to better leverage multi-level representations before upsampling stage, and to allow an efficient information and gradient flow within the network. Experiments on benchmark datasets show that the proposed LiNet achieves favorable performance against lightweight state-of-the-art methods.
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