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中国图象图形学报 2013
Image super-resolution reconstruction based on residual error
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Abstract:
An image super-resolution (SR) reconstruction algorithm based on residual error is proposed. Patch pairs, composed of features for low-resolution (LR) patches and residual errors between original high-resolution (HR) image patches and interpolated LR image patches, are classified by K-means, Each class patch pair is trained by KSVD (K-singular value decomposition) to obtain an LR and HR dictionary pair. Residual errors are reconstructed by the dictionary pairs selected by the Euclidean distance between the test patches and class centers and by the weighted sum of the reconstructed results of the similar class patches. Then, combined with interpolated LR images and reconstructed residual errors, HR images are reconstructed. Experimental results show that the proposed method has a better performance and the method to classify patches and perform weight sum of the reconstructed results of the similar class patches is improving the quality of the SR image.