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Frequency domain analysis of Super Resolution Image Reconstruction and super resolution with nonlinear processing

机译:超分辨率图像重建的频域分析和非线性处理的超分辨率

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Super Resolution (SR) is an interesting topic in image and video research. Among SR Super Resolution Image Reconstruction (SRR) is one of the most common SR technologies. Originally SRR was proposed for still images. Recently SRR has been applied to video. However, there are important differences between still images and video that must be addressed when working with SRR. The basic hypothesis of SRR is that, using several low-resolution images, we should be able to construct a single high-resolution image. However, adjacent video frames cannot always guarantee this result. These limitations and image quality for video have been extensively examined in the time domain as subjective assessments. In this study, analysis of SRR is conducted in the two dimensional frequency domain. The limitations of SRR is discussed with two-dimensional fast Fourier (2D-FFT) results as objective criteria. To overcome the limitations of SRR Nonlinear Signal Processing (NLSP) is proposed in this paper. Although it is a simple algorithm, it can create higher frequency elements that the input image does not have. Real time hardware with NLSP is also mentioned.
机译:超分辨率(SR)是图像和视频研究中一个有趣的话题。在SR中,超分辨率图像重建(SRR)是最常见的SR技术之一。最初,SRR被建议用于静止图像。最近,SRR已应用于视频。但是,在使用SRR时,必须解决静态图像和视频之间的重要区别。 SRR的基本假设是,使用几个低分辨率图像,我们应该能够构建单个高分辨率图像。但是,相邻的视频帧不能总是保证该结果。视频的这些局限性和图像质量已在时域中作为主观评估得到了广泛检查。在这项研究中,SRR的分析是在二维频域中进行的。以二维快速傅里叶(2D-FFT)结果作为客观标准讨论了SRR的局限性。为了克服SRR非线性信号处理(NLSP)的局限性,本文提出了这种方法。尽管这是一种简单的算法,但它可以创建输入图像所没有的更高频率的元素。还提到了带有NLSP的实时硬件。

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