基于卷积神经网络的端到端单图像超分辨率

L. Ferariu, Iosif-Alin Beti
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引用次数: 0

摘要

单图像超分辨率算法旨在提高输入图像的分辨率,而不损害其视觉感知。卷积神经网络(cnn)具有很强的理解图像结构的能力,成功地应用于这一问题。先前的研究表明,人类的感知主要受亮度变化的影响。在这方面,本文介绍了两种仅在亮度通道上运行的cnn,其计算成本较低。每个模型都提供低分辨率(LR)和高分辨率(HR)映射之间的端到端映射。由于上采样集成到CNN中,该设计允许对HR图像质量进行控制。此外,神经结构可以配置许多层,使用小型LR特征映射,以提供快速的运行时图像处理。该方法在两种情况下进行了举例说明:为亮度通道生成HR映射或残差映射;残差图应该添加到插值上采样的图中。实验结果表明,这两种模型在时间性能上都有提高,并且可以产生具有较高NIQE分数的HR图像。
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End-to-End Single Image Super-Resolution Based on Convolutional Neural Networks
Single image super-resolution algorithms aim to increase the resolution of an input image without deteriorating its visual perception. With a strong ability to understand the structure of an image, convolutional neural networks (CNNs) are successfully applied to this problem. Previous studies have shown that human perception is mainly influenced by variations in luminance. In this regard, this paper introduces two CNNs that operate only on the luminance channel, at low computational costs. Each model provides an end-to-end mapping between a low-resolution (LR) and a high-resolution (HR) map. Because upsampling is integrated into CNN, the design allows the control of HR image quality. In addition, the neural architectures can be configured with many layers operating with small LR feature maps, to provide fast run-time image processing. The approach is exemplified in two cases: generate the HR map or a residual map for the luminance channel; the residual map should be added to the map upsampled by interpolation. Besides having improved time performance, the two models can produce HR images with high NIQE scores, as shown experimentally.
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