Single image super-resolution using compressive sensing with learned overcomplete dictionary

B. Deka, Kanchan Kumar Gorain, Navadeep Kalita, B. Das
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引用次数: 6

Abstract

This paper proposes a novel framework that unifies the concept of sparsity of a signal over a properly chosen basis set and the theory of signal reconstruction via compressed sensing in order to obtain a high-resolution image derived by using a single down-sampled version of the same image. First, we enforce sparse overcomplete representations on the low-resolution patches of the input image. Then, using the sparse coefficients as obtained above, we reconstruct a high-resolution output image. A blurring matrix is introduced in order to enhance the incoherency between the sparsifying dictionary and the sensing matrices which also resulted in better preservation of image edges and other textures. When compared with the similar techniques, the proposed method yields much better result both visually and quantitatively.
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基于学习过完全字典的压缩感知单幅图像超分辨率
本文提出了一个新的框架,该框架将信号在适当选择的基集上的稀疏性概念与通过压缩感知的信号重建理论相结合,以便通过使用同一图像的单个降采样版本获得高分辨率图像。首先,我们对输入图像的低分辨率补丁执行稀疏过完全表示。然后,利用得到的稀疏系数,重构出高分辨率的输出图像。为了增强稀疏字典和感知矩阵之间的不相干性,引入了模糊矩阵,从而更好地保留了图像边缘和其他纹理。与同类技术相比,该方法在视觉和定量上都取得了较好的效果。
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