Diffusion-Denoising Process with Gated U-Net for High-Quality Document Binarization

Author:

Han Sangkwon1ORCID,Ji Seungbin1ORCID,Rhee Jongtae1

Affiliation:

1. Department of Industrial and Systems Engineering, Dongguk University, Seoul 04620, Republic of Korea

Abstract

The binarization of degraded documents represents a crucial preprocessing task for various document analyses, including optical character recognition and historical document analysis. Various convolutional neural network models and generative models have been used for document binarization. However, these models often struggle to deliver generalized performance on noise types the model has not encountered during training and may have difficulty extracting intricate text strokes. We herein propose a novel approach to address these challenges by introducing the use of the latent diffusion model, a well-known high-quality image-generation model, into the realm of document binarization for the first time. By leveraging an iterative diffusion-denoising process within the latent space, our approach excels at producing high-quality, clean, binarized images and demonstrates excellent generalization using both data distribution and time steps during training. Furthermore, we enhance our model’s ability to preserve text strokes by incorporating a gated U-Net into the backbone network. The gated convolution mechanism allows the model to focus on the text region by combining gating values and features, facilitating the extraction of intricate text strokes. To maximize the effectiveness of our proposed model, we use a combination of the latent diffusion model loss and pixel-level loss, which aligns with the model’s structure. The experimental results on the Handwritten Document Image Binarization Contest and Document Image Binarization Contest benchmark datasets showcase the superior performance of our proposed model compared to existing methods.

Funder

Ministry of Trade, Industry, and Energy (MOTIE) and the Korea Institute for the Advancement of Technology

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference56 articles.

1. Sulaiman, A., Omar, K., and Nasrudin, M.F. (2019). Degraded historical document binarization: A review on issues, challenges, techniques, and future directions. J. Imaging, 5.

2. Farahmand, A., Sarrafzadeh, H., and Shanbehzadeh, J. (2013, January 21–23). Document image noises and removal methods. Proceedings of the International MultiConference of Engineers and Computer Scientists, Hong Kong, China.

3. Binarization of document images: A comprehensive review;Mustafa;J. Phys. Conf. Ser.,2018

4. Chauhan, S., Sharma, E., and Doegar, A. (2016, January 7–9). Binarization techniques for degraded document images—A review. Proceedings of the 2016 5th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions) (ICRITO), Noida, India.

5. Sauvola, J., Seppanen, T., Haapakoski, S., and Pietikainen, M. (1997, January 18–20). Adaptive document binarization. Proceedings of the Fourth International Conference on Document Analysis and Recognition, Ulm, Germany.

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1. Binarizing Documents by Leveraging both Space and Frequency;Lecture Notes in Computer Science;2024

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