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Radial Basis Function Neural Network Based Super- Resolution Restoration for an Undersampled Image 被引量:1

Radial Basis Function Neural Network Based Super- Resolution Restoration for an Undersampled Image
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摘要 To achieve restoration of high frequency information for an undersampled and degraded low-resolution image, a nonlinear and real-time processing method-the radial basis function (RBF) neural network based super-resolution method of restoration is proposed. The RBF network configuration and processing method is suitable for a high resolution restoration from an undersampled low-resolution image. The soft-competition learning scheme based on the k-means algorithm is used, and can achieve higher mapping approximation accuracy without increase in the network size. Experiments showed that the proposed algorithm can achieve a super-resolution restored image from an undersampled and degraded low-resolution image, and requires a shorter training time when compared with the multiplayer perception (MLP) network. To achieve restoration of high frequency information for an undersampled and degraded low-resolution image, a nonlinear and real-time processing method-the radial basis function (RBF) neural network based super-resolution method of restoration is proposed. The RBF network configuration and processing method is suitable for a high resolution restoration from an undersampled low-resolution image. The soft-competition learning scheme based on the k-means algorithm is used, and can achieve higher mapping approximation accuracy without increase in the network size. Experiments showed that the proposed algorithm can achieve a super-resolution restored image from an undersampled and degraded low-resolution image, and requires a shorter training time when compared with the multiplayer perception (MLP) network.
出处 《Journal of Beijing Institute of Technology》 EI CAS 2004年第2期135-138,共4页 北京理工大学学报(英文版)
基金 SponsoredbyFundforResearchonDoctoralProgramsinInstitutionsofHigherLearning ( 2 0 0 2 0 0 70 0 6)andBasicResearchFundofBIT (BIT UBF 2 0 0 3 0 1F2 0 )
关键词 SUPER-RESOLUTION image restoration image processing neural networks UNDERSAMPLING super-resolution image restoration image processing neural networks undersampling
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