DeepErase: Weakly Supervised Ink Artifact Removal in Document Text Images

10/15/2019
by   W. Ronny Huang, et al.
57

Paper-intensive industries like insurance, law, and government have long leveraged optical character recognition (OCR) to automatically transcribe hordes of scanned documents into text strings for downstream processing. Even in 2019, there are still many scanned documents and mail that come into businesses in non-digital format. Text to be extracted from real world documents is often nestled inside rich formatting, such as tabular structures or forms with fill-in-the-blank boxes or underlines whose ink often touches or even strikes through the ink of the text itself. Further, the text region could have random ink smudges or spurious strokes. Such ink artifacts can severely interfere with the performance of recognition algorithms or other downstream processing tasks. In this work, we propose DeepErase, a neural-based preprocessor to erase ink artifacts from text images. We devise a method to programmatically assemble real text images and real artifacts into realistic-looking "dirty" text images, and use them to train an artifact segmentation network in a weakly supervised manner, since pixel-level annotations are automatically obtained during the assembly process. In addition to high segmentation accuracy, we show that our cleansed images achieve a significant boost in recognition accuracy by popular OCR software such as Tesseract 4.0. Finally, we test DeepErase on out-of-distribution datasets (NIST SDB) of scanned IRS tax return forms and achieve double-digit improvements in accuracy. All experiments are performed on both printed and handwritten text. Code for all experiments is available at https://github.com/yikeqicn/DeepErase

READ FULL TEXT

page 1

page 7

page 8

research
07/29/2022

PageNet: Towards End-to-End Weakly Supervised Page-Level Handwritten Chinese Text Recognition

Handwritten Chinese text recognition (HCTR) has been an active research ...
research
06/14/2022

Online Easy Example Mining for Weakly-supervised Gland Segmentation from Histology Images

Developing an AI-assisted gland segmentation method from histology image...
research
08/28/2023

Referring Image Segmentation Using Text Supervision

Existing Referring Image Segmentation (RIS) methods typically require ex...
research
06/05/2023

Transformer-Based UNet with Multi-Headed Cross-Attention Skip Connections to Eliminate Artifacts in Scanned Documents

The extraction of text in high quality is essential for text-based docum...
research
06/19/2022

What is Where by Looking: Weakly-Supervised Open-World Phrase-Grounding without Text Inputs

Given an input image, and nothing else, our method returns the bounding ...
research
11/27/2020

Rethinking Text Segmentation: A Novel Dataset and A Text-Specific Refinement Approach

Text segmentation is a prerequisite in many real-world text-related task...

Please sign up or login with your details

Forgot password? Click here to reset