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SoftCTC $unicode{x2013}$ Semi-Supervised Learning for Text Recognition using Soft Pseudo-Labels

2022-12-05 10:13:50
Martin Kišš, Michal Hradiš, Karel Beneš, Petr Buchal, Michal Kula

Abstract

This paper explores semi-supervised training for sequence tasks, such as Optical Character Recognition or Automatic Speech Recognition. We propose a novel loss function $\unicode{x2013}$ SoftCTC $\unicode{x2013}$ which is an extension of CTC allowing to consider multiple transcription variants at the same time. This allows to omit the confidence based filtering step which is otherwise a crucial component of pseudo-labeling approaches to semi-supervised learning. We demonstrate the effectiveness of our method on a challenging handwriting recognition task and conclude that SoftCTC matches the performance of a finely-tuned filtering based pipeline. We also evaluated SoftCTC in terms of computational efficiency, concluding that it is significantly more efficient than a naïve CTC-based approach for training on multiple transcription variants, and we make our GPU implementation public.

Abstract (translated)

URL

https://arxiv.org/abs/2212.02135

PDF

https://arxiv.org/pdf/2212.02135.pdf


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