CVApr 17, 2018

Synthetic data generation for Indic handwritten text recognition

arXiv:1804.06254v115 citations
Originality Synthesis-oriented
AI Analysis

This addresses the challenge of expensive data collection for low-resource languages, though it is incremental as it applies existing synthetic data methods to new domains.

The paper tackles the problem of insufficient training data for handwritten text recognition in Indic scripts by generating synthetic data through distortion of digital sources, achieving encouraging results for Devanagari and Bengali numeral, character, and word recognition.

This paper presents a novel approach to generate synthetic dataset for handwritten word recognition systems. It is difficult to recognize handwritten scripts for which sufficient training data is not readily available or it may be expensive to collect such data. Hence, it becomes hard to train recognition systems owing to lack of proper dataset. To overcome such problems, synthetic data could be used to create or expand the existing training dataset to improve recognition performance. Any available digital data from online newspaper and such sources can be used to generate synthetic data. In this paper, we propose to add distortion/deformation to digital data in such a way that the underlying pattern is preserved, so that the image so produced bears a close similarity to actual handwritten samples. The images thus produced can be used independently to train the system or be combined with natural handwritten data to augment the original dataset and improve the recognition system. We experimented using synthetic data to improve the recognition accuracy of isolated characters and words. The framework is tested on 2 Indic scripts - Devanagari (Hindi) and Bengali (Bangla), for numeral, character and word recognition. We have obtained encouraging results from the experiment. Finally, the experiment with Latin text verifies the utility of the approach.

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