Lexically Aware Semi-Supervised Learning for OCR Post-Correction

Author:

Rijhwani Shruti1,Rosenblum Daisy2,Anastasopoulos Antonios3,Neubig Graham4

Affiliation:

1. Language Technologies Institute, Carnegie Mellon University, USA. srijhwan@cs.cmu.edu

2. University of British Columbia, Canada. daisy.rosenblum@ubc.ca

3. Department of Computer Science, George Mason University, USA. antonis@gmu.edu

4. Language Technologies Institute, Carnegie Mellon University, USA. gneubig@cs.cmu.edu

Abstract

Abstract Much of the existing linguistic data in many languages of the world is locked away in non- digitized books and documents. Optical character recognition (OCR) can be used to produce digitized text, and previous work has demonstrated the utility of neural post-correction methods that improve the results of general- purpose OCR systems on recognition of less- well-resourced languages. However, these methods rely on manually curated post- correction data, which are relatively scarce compared to the non-annotated raw images that need to be digitized. In this paper, we present a semi-supervised learning method that makes it possible to utilize these raw images to improve performance, specifically through the use of self-training, a technique where a model is iteratively trained on its own outputs. In addition, to enforce consistency in the recognized vocabulary, we introduce a lexically aware decoding method that augments the neural post-correction model with a count-based language model constructed from the recognized texts, implemented using weighted finite-state automata (WFSA) for efficient and effective decoding. Results on four endangered languages demonstrate the utility of the proposed method, with relative error reductions of 15%–29%, where we find the combination of self-training and lexically aware decoding essential for achieving consistent improvements.1

Publisher

MIT Press - Journals

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Human-Computer Interaction,Communication

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