A Computational Model for Cursive Handwriting Based on the Minimization Principle

Abstract

We propose a trajectory planning and control theory for continuous movements such as connected cursive handwriting and continuous natural speech. Its hardware is based on our previously proposed forward-inverse-relaxation neural network (Wada & Kawato, 1993). Computationally, its optimization principle is the minimum torque(cid:173) change criterion. Regarding the representation level, hard constraints satisfied by a trajectory are represented as a set of via-points extracted from a handwritten character. Accordingly, we propose a via-point estimation algorithm that estimates via-points by repeating the trajectory formation of a character and the via-point extraction from the character. In experiments, good quantitative agreement is found between human handwriting data and the trajectories generated by the theory. Finally, we propose a recognition schema based on the movement generation. We show a result in which the recognition schema is applied to the handwritten character recognition and can be extended to the phoneme timing estimation of natural speech.

Cite

Text

Wada et al. "A Computational Model for Cursive Handwriting Based on the Minimization Principle." Neural Information Processing Systems, 1993.

Markdown

[Wada et al. "A Computational Model for Cursive Handwriting Based on the Minimization Principle." Neural Information Processing Systems, 1993.](https://mlanthology.org/neurips/1993/wada1993neurips-computational/)

BibTeX

@inproceedings{wada1993neurips-computational,
  title     = {{A Computational Model for Cursive Handwriting Based on the Minimization Principle}},
  author    = {Wada, Yasuhiro and Koike, Yasuharu and Vatikiotis-Bateson, Eric and Kawato, Mitsuo},
  booktitle = {Neural Information Processing Systems},
  year      = {1993},
  pages     = {727-734},
  url       = {https://mlanthology.org/neurips/1993/wada1993neurips-computational/}
}