2021
DOI: 10.48550/arxiv.2105.09437
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End-to-End Unsupervised Document Image Blind Denoising

Abstract: Removing noise from scanned pages is a vital step before their submission to optical character recognition (OCR) system. Most available image denoising methods are supervised where the pairs of noisy/clean pages are required. However, this assumption is rarely met in real settings. Besides, there is no single model that can remove various noise types from documents. Here, we propose a unified end-toend unsupervised deep learning model, for the first time, that can effectively remove multiple types of noise, in… Show more

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