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首页> 外文期刊>International journal of knowledge-based and intelligent engineering systems >Video super resolution using convolutional neural network and image fusion techniques
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Video super resolution using convolutional neural network and image fusion techniques

机译:视频超分辨率使用卷积神经网络和图像融合技术

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摘要

Recently, huge progress has been achieved in the field of single image super resolution which augments the resolution of images. The idea behind super resolution is to convert low-resolution images into high-resolution images. SRCNN (Single Resolution Convolutional Neural Network) was a huge improvement over the existing methods of single-image super resolution. However, video super-resolution, despite being an active field of research, is yet to benefit from deep learning. Using still images and videos downloaded from various sources, we explore the possibility of using SRCNN along with image fusion techniques (minima, maxima, average, PCA, DWT) to improve over existing video super resolution methods. Video Super-Resolution has inherent difficulties such as unexpected motion, blur and noise. We propose Video Super Resolution - Image Fusion (VSR-IF) architecture which utilizes information from multiple frames to produce a single high- resolution frame for a video. We use SRCNN as a reference model to obtain high resolution adjacent frames and use a concatenation layer to group those frames into a single frame. Since, our method is data-driven and requires only minimal initial training, it is faster than other video super resolution methods. After testing our program, we find that our technique shows a significant improvement over SCRNN and other single image and frame super resolution techniques.
机译:最近,在单幅图像超分辨率领域取得了巨大进展,这增加了图像的分辨率。超级分辨率背后的想法是将低分辨率图像转换为高分辨率图像。 SRCNN(单分辨率卷积神经网络)对现有的单图像超分辨率方法进行了巨大的改进。然而,尽管是积极的研究领域,视频超分辨率尚未受益于深度学习。使用从各种来源下载的静止图像和视频,我们探讨了使用SRCNN以及图像融合技术(MILEA,MAXIMA,平均,PCA,DWT)的可能性来改善现有视频超分辨率方法。视频超分辨率具有固有的困难,例如意外的运动,模糊和噪音。我们提出了视频超分辨率 - 图像融合(VSR-IF)架构,其利用来自多个帧的信息来为视频产生单个高分辨率帧。我们使用SRCNN作为参考模型来获得高分辨率相邻帧,并使用级联层将这些帧分组到单帧中。由于我们的方法是数据驱动的并且只需要最少的初始训练,它比其他视频超分辨率方法更快。在测试我们的程序后,我们发现我们的技术在SCRNN和其他单一图像和帧超分辨率技术上显示出显着改进。

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