Practical Single-Image Super-Resolution Using Look-Up Table

Younghyun Jo, Seon Joo Kim
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引用次数: 38

Abstract

A number of super-resolution (SR) algorithms from interpolation to deep neural networks (DNN) have emerged to restore or create missing details of the input low-resolution image. As mobile devices and display hardware develops, the demand for practical SR technology has increased. Current state-of-the-art SR methods are based on DNNs for better quality. However, they are feasible when executed by using a parallel computing module (e.g. GPUs), and have been difficult to apply to general uses such as end-user software, smartphones, and televisions. To this end, we propose an efficient and practical approach for the SR by adopting look-up table (LUT). We train a deep SR network with a small receptive field and transfer the output values of the learned deep model to the LUT. At test time, we retrieve the precomputed HR output values from the LUT for query LR input pixels. The proposed method can be performed very quickly because it does not require a large number of floating point operations. Experimental results show the efficiency and the effectiveness of our method. Especially, our method runs faster while showing better quality compared to bicubic interpolation.
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实用的单图像超分辨率使用查找表
从插值到深度神经网络(DNN),已经出现了许多超分辨率(SR)算法来恢复或创建输入低分辨率图像的缺失细节。随着移动设备和显示硬件的发展,对实用SR技术的需求也在增加。目前最先进的SR方法是基于dnn的,以获得更好的质量。然而,当使用并行计算模块(例如gpu)执行时,它们是可行的,并且很难应用于最终用户软件,智能手机和电视等一般用途。为此,我们提出了一种高效实用的SR方法,即采用查找表(LUT)。我们训练了一个具有小接受场的深度SR网络,并将学习到的深度模型的输出值转移到LUT。在测试时,我们从查询LR输入像素的LUT中检索预先计算的HR输出值。由于不需要大量的浮点运算,所提出的方法可以非常快速地执行。实验结果表明了该方法的有效性和有效性。特别是,与双三次插值相比,我们的方法运行速度更快,同时显示出更好的质量。
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