图学学报
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摘要: 将低分辨率图像重建成高分辨率图像是图像处理领域中的一个重要课题。Yang 提出 一种基于联合字典学习的图像超分辨率重建算法,其算法样本选取与字典训练方法较为复杂。提 出一种基于MOD 字典学习的图像超分辨率重建新算法,首先采用少量的训练样本代替Yang 的大量训 练样本,然后使用MOD 字典学习算法代替Yang 的FFS 字典学习算法,最后利用字典对图像进 行稀疏表示与重建。实验结果表明,所提出的算法速度较快,并且重建图像的质量较高。
关键词: 图像处理, 图像重建, 联合字典, 超分辨率重建, MOD
Abstract: It is an important topic to reconstruct a high resolution image from a low resolution image. Yang proposed an image super-resolution reconstruction algorithm based on the joint dictionary-learning, which needs large samples, and dictionary training methods are complicated. In this paper, a new algorithm of image super-resolution reconstruction based on MOD dictionary-learning is proposed, a small amount of training samples is firstly used to replace large numbers of training samples of Yangs, then the MOD dictionary-learning algorithm is used instead of Yangs FFS dictionary-learning algorithm, at last, the resulted dictionary is applied to the image sparse representation and super-resolution reconstruction. The experimental results show that the image reconstruction speed is improved greatly with better reconstruction quality.
Key words: image processing, image reconstruction, joint dictionary, super-resolution reconstruction, MOD
邹建成, 张文婷. 一种基于MOD 字典学习的图像超分辨率重建新算法[J]. 图学学报.
Zou Jiancheng, Zhang Wenting. A New Algorithm of Image Super-Resolution Reconstruction Based on MOD Dictionary-Learning[J]. Journal of Graphics.
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http://www.txxb.com.cn/CN/Y2015/V36/I3/402