CVLGDec 6, 2021

A Survey on Deep learning based Document Image Enhancement

arXiv:2112.02719v413 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental survey that addresses the problem of improving document quality for automated analysis tasks like character recognition.

The paper surveys deep learning-based methods for enhancing degraded document images, covering tasks like binarization and deblurring, and identifies under-explored areas such as exposure correction and super resolution.

Digitized documents such as scientific articles, tax forms, invoices, contract papers, historic texts are widely used nowadays. These document images could be degraded or damaged due to various reasons including poor lighting conditions, shadow, distortions like noise and blur, aging, ink stain, bleed-through, watermark, stamp, etc. Document image enhancement plays a crucial role as a pre-processing step in many automated document analysis and recognition tasks such as character recognition. With recent advances in deep learning, many methods are proposed to enhance the quality of these document images. In this paper, we review deep learning-based methods, datasets, and metrics for six main document image enhancement tasks, including binarization, debluring, denoising, defading, watermark removal, and shadow removal. We summarize the recent works for each task and discuss their features, challenges, and limitations. We introduce multiple document image enhancement tasks that have received little to no attention, including over and under exposure correction, super resolution, and bleed-through removal. We identify several promising research directions and opportunities for future research.

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