基于实例的Contourlet域视频超分辨率算法

Wei Ni, Baolong Quo, Liu Yang
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引用次数: 8

摘要

提出了一种基于实例的contourlet变换的数字视频超分辨率算法。输入是一个低分辨率的视频序列以及具有相似内容的高分辨率静止图像。首先,将低分辨率帧内插到与参考静止图像相同的空间分辨率;针对高分辨率静止图像具有良好的方向性、多尺度性和各向异性的特点,利用非下采样contourlet构造变换系数patch训练集。然后在完整的训练集中应用基于块的运动估计,以找到插值帧与参考静止图像之间的最佳匹配。根据低频对和高频对的对应关系,可以很容易地从训练集中学习到输入帧中缺失的高频信息。最后,对插值后的帧进行反轮廓波变换,并补充高频子带恢复超分辨图像。在视频帧上的初步实验结果表明,该算法在视觉质量和PSNR值上都优于传统的空间插值方法和基于小波的插值算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Example based Super-Resolution Algorithm of Video in Contourlet Domain
An example based super-resolution algorithm for digital video using contourlet transform is proposed in this paper. The input is a low resolution video sequence together with a high resolution still image of similar content. Firstly, the low resolution frames are interpolated to the same spatial resolution as the reference still image. For the good properties of directional, multiscale and anisotropy, the nonsub-sampled contourlet is utilized to create the training set of transform coefficient patches from the high resolution still image. Block based motion estimation is then applied inside the complete training set to find the best matching between interpolated frame and reference still image. According to the correspondence between low frequency and high frequency pairs, the missing high frequency information of the input frame can be easily learned from the training set. Finally, an inverse contourlet transform is applied to the interpolated frame and supplement high frequency subbands to recover the super-resolved image. Preliminary experimental results on video frames show that the proposed super- resolution algorithm outperforms conventional spatial interpolation methods and wavelet based interpolation algorithm both in visual quality and the PSNR value.
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