Multiple Learned Dictionaries Based Clustered Sparse Coding for the Super-Resolution of Single Text Image

Document Analysis and Recognition(2013)

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摘要
This paper addresses the problem of generating a super-resolved version of a low-resolution textual image by using Sparse Coding (SC) which suggests that image patches can be sparsely represented from a suitable dictionary. In order to enhance the learning performance and improve the reconstruction ability, we propose in this paper a multiple learned dictionaries based clustered SC approach for single text image super resolution. For instance, a large High-Resolution/Low-Resolution (HR/LR) patch pair database is collected from a set of high quality character images and then partitioned into several clusters by performing an intelligent clustering algorithm. Two coupled HR/LR dictionaries are learned from each cluster. Based on SC principle, local patch of a LR image is represented from each LR dictionary generating multiple sparse representations of the same patch. The representation that minimizes the reconstruction error is retained and applied to generate a local HR patch from the corresponding HR dictionary. The performance of the proposed approach is evaluated and compared visually and quantitatively to other existing methods applied to text images. In addition, experimental results on character recognition illustrate that the proposed method outperforms the other methods, involved in this study, by providing better recognition rates.
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关键词
character recognition,dictionaries,document image processing,image coding,image representation,image resolution,learning (artificial intelligence),pattern clustering,text detection,visual databases,HR-LR dictionary learning,HR-LR patch pair database,LR image local patch representation,character recognition,high-resolution-low-resolution patch pair database,intelligent clustering algorithm,learning performance,local HR patch,low-resolution textual image,multiple learned dictionaries based clustered SC approach,multiple learned dictionaries based clustered sparse coding,reconstruction ability,single text image superresolution
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