Ultra Sharp : Study of Single Image Super Resolution Using Residual Dense Network

K. Gunasekaran
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引用次数: 4

Abstract

For years, Single Image Super Resolution (SISR) has been an interesting and ill-posed problem in computer vision. The traditional super-resolution (SR) imaging approaches involve interpolation, reconstruction, and learning-based methods. Interpolation methods are fast and uncomplicated to compute, but they are not so accurate and reliable. Reconstruction-based methods are better compared with interpolation methods, but they are time-consuming and the quality degrades as the scaling increases. Even though learning-based methods like Markov random chains are far better than all the previous ones, they are unable to match the performance of deep learning models for SISR. This study examines the Residual Dense Networks architecture proposed by Yhang et al. and analyzes the importance of its components. By leveraging hierarchical features from original low-resolution (LR) images, this architecture achieves superior performance, with a network structure comprising four main blocks, including the residual dense block (RDB) as the core. Through investigations of each block and analyses using various loss metrics, the study evaluates the effectiveness of the architecture and compares it to other state-of-the-art models that differ in both architecture and components.
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超锐利:使用残差密集网络的单幅图像超分辨率研究
多年来,单图像超分辨率(SISR)一直是计算机视觉中一个有趣的不适定问题。传统的超分辨率成像方法包括插值、重建和基于学习的方法。插值方法计算简单,速度快,但精度和可靠性不高。与插值方法相比,基于重建的方法性能较好,但随着尺度的增大,重构方法耗时长,且质量下降。尽管像马尔可夫随机链这样的基于学习的方法比之前的所有方法都要好得多,但它们无法与深度学习模型的SISR性能相匹配。本研究考察了Yhang等人提出的残差密集网络架构,并分析了其组成部分的重要性。通过利用原始低分辨率(LR)图像的分层特征,该架构实现了卓越的性能,其网络结构包括四个主要块,其中残余密集块(RDB)为核心。通过对每个区块的调查和使用各种损失指标的分析,该研究评估了该体系结构的有效性,并将其与其他在体系结构和组件上不同的最先进模型进行了比较。
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