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A new ISR method based on the combination of modified K-SVD model and RAMP algrithm

机译:基于改进的K-SVD模型和RAMP算法的ISR新方法

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A new Image Super-resolution Reconstruction (ISR) method combined a modified K-means based Singular Value Decomposition (M_K-SVD) model and Regularized Adaptive Matching Pursuit (RAMP) algorithm is proposed in this paper. In the M_K-SVD model, the maximum sparsity of sparse coefficients is considered. In the condition of the unknown sparsity of the original signals, RAMP algorithm can choose automatically and adaptively the candidate set, and utilize the regularization process to implement the final support set so as to finish accurately the task of signal reconstruction. Combined the advantages of M_K-SVD and RAMP algorithm, for LR images and High Resolution (HR) images, the LR and HR dictionaries are trained. And then, utilized the optimized LR sparse coefficient vectors and the HR dictionary, the HR image patches can be estimated. And considered the original locations of HR image patches to be restored, the LR images can be reconstructed. However, LR images contain much unknown noise, so, before training dictionaries, the LR images are first preprocessed by M_K-SVD model. In test, human-made LR images (i.e. natural images' degraded versions) and real LR images (i.e. millimeter wave images, MMW) are respectively used to testify our method proposed. Further, compared our ISR method with those of the basic K-SVD, Regularized Orthogonal Matching Pursuit (ROMP), RAMP, and Sparsity Adaptive Matching Pursuit (SAMP) and so on, experimental results testified the ISR validity of our method proposed. Meanwhile, the Signal Noise Ratio (SNR) criterion is used to measure restored human made LR images, and the Relative Signal Noise Ratio (RSNR) criterion is used to test the quality of MMW image restored. Experimental results prove that our method is indeed efficient in the research field of ISR reconstruction. (C) 2015 Published by Elsevier B.V.
机译:提出了一种新的图像超分辨率重建(ISR)方法,该方法结合了改进的基于K均值的奇异值分解(M_K-SVD)模型和正则化自适应匹配追踪(RAMP)算法。在M_K-SVD模型中,考虑了稀疏系数的最大稀疏性。在原始信号稀疏性未知的情况下,RAMP算法可以自动,自适应地选择候选集,并利用正则化过程实现最终的支持集,从而准确地完成信号重建的任务。结合了M_K-SVD和RAMP算法的优势,针对LR图像和高分辨率(HR)图像,训练了LR和HR词典。然后,利用优化的LR稀疏系数矢量和HR字典,可以估计HR图像补丁。考虑到要还原的HR图像补丁的原始位置,可以重建LR图像。但是,LR图像包含很多未知的噪声,因此,在训练字典之前,首先应通过M_K-SVD模型对LR图像进行预处理。在测试中,分别使用人造LR图像(即自然图像的降级版本)和真实LR图像(即毫米波图像,MMW)来证明我们提出的方法。此外,将我们的ISR方法与基本K-SVD,正则正交匹配追踪(ROMP),RAMP和稀疏自适应匹配追踪(SAMP)等方法进行比较,实验结果证明了我们方法的ISR有效性。同时,使用信噪比(SNR)标准来测量还原的人造LR图像,并使用相对信噪比(RSNR)标准来测试还原的MMW图像的质量。实验结果证明我们的方法在ISR重建研究领域确实有效。 (C)2015由Elsevier B.V.发布

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