ELCVIA Electronic Letters on Computer Vision and Image Analysis (Oct 2005)

Self-supervised adaptation for on-line script text recognition

  • Loic Oudot,
  • Lionel Prevost,
  • Maurice Milgram

DOI
https://doi.org/10.5565/rev/elcvia.98
Journal volume & issue
Vol. 5, no. 2

Abstract

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We have recently developed in our lab a text recognizer for on-line texts written on a touch-terminal. We present in this paper several strategies to adapt this recognizer in a self-supervised way to a given writer and compare them to the supervised adaptation scheme. The baseline system is based on the activation-verification cognitive model. We have designed this recognizer to be writer-independent but it may be adapted to be writer-dependent in order to increase the recognition speed and rate. The classification expert can be iteratively modified in order to learn the particularities of a writer. The best self-supervised adaptation strategy is called prototype dynamic management and gets good results, close to those of the supervised methods. The combination of supervised and self-supervised strategies increases accuracy again. Results, presented on a large database of 90 texts (5,400 words) written by 38 different writers are very encouraging with an error rate lower than 10~\%.

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