A Novel Technique for Image Super Resolution Based on Sparse Representations and Compact Entity Extraction

M. A. Irfan, Sahib Khan, Syed Ali Hassan, Nasir Ahmad
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Abstract

A novel method of image super resolution using sparse representation has been discussed in this paper. The main purpose is to acquire the super-resolved image from the down scaled and blurred images. With the small number of elements from a huge set of vectors, sparse signal model approximates signals and this large dataset is called a dictionary. For construction of high and low-resolution dictionaries from the condensed atoms extracted from the training image patches, the Orthogonal Matching Pursuit approach has been used. The blurred and down-scaled version of the image is super resolved using the above-mentioned dictionaries. The outcomes are compared both instinctively by the visual assessment of the resulting super-resolve images by means of the proposed scheme and the bi-cubic interpolation method, and by comparing the Peak Signal-to-Noise Ratio (PSNR) obtained by the two approaches. Both the comparison metrics, i.e. visual quality of acquired super resolved images and PSNR measures show that the proposed approach is superior to the existing state of the art Bi-Cubic interpolation.
基于稀疏表示和紧凑实体提取的图像超分辨率新技术
本文讨论了一种利用稀疏表示实现图像超分辨率的新方法。其主要目的是从缩小的和模糊的图像中获得超分辨图像。稀疏信号模型从一个庞大的向量集合中提取少量的元素来逼近信号,这个庞大的数据集被称为字典。对于从训练图像patch中提取的凝聚原子构建高分辨率和低分辨率字典,采用了正交匹配追踪方法。使用上述字典,图像的模糊和缩小版本具有超分辨率。通过对所提出的方案和双三次插值方法产生的超分辨率图像的视觉评估,以及通过比较两种方法获得的峰值信噪比(PSNR),本能地对结果进行了比较。对比指标,即获得的超分辨图像的视觉质量和PSNR指标都表明,该方法优于现有的双三次插值方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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