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A Regularization Approach to Blind Deblurring and Denoising of QR Barcodes

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 Added by Yves van Gennip
 Publication date 2014
and research's language is English




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QR bar codes are prototypical images for which part of the image is a priori known (required patterns). Open source bar code readers, such as ZBar, are readily available. We exploit both these facts to provide and assess purely regularization-based methods for blind deblurring of QR bar codes in the presence of noise.



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