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On finding optimal parameters of an oscillatory model ofhandwriting

Published online by Cambridge University Press:  11 July 2014

Gaëtan André
Affiliation:
University of Toulouse, ENSEEIHT-IRIT, 2 rue Camichel, B.P. 7122, 31072 Toulouse Cedex 7, France. . gaetan.andre@irit.fr; frederic.messine@n7.fr
Frédéric Messine
Affiliation:
University of Toulouse, ENSEEIHT-IRIT, 2 rue Camichel, B.P. 7122, 31072 Toulouse Cedex 7, France. . gaetan.andre@irit.fr; frederic.messine@n7.fr
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Abstract

In this paper, we show how optimization methods can be used efficiently to determine theparameters of an oscillatory model of handwriting. Because these methods have to be usedin real-time applications, this involves that the optimization problems must be rapidelysolved. Hence, we developed an original heuristic algorithm, named FHA. This code wasvalidated by comparing it (accuracy/CPU-times) with a multistart method based on TrustRegion Reflective algorithm.

Type
Research Article
Copyright
© EDP Sciences, ROADEF, SMAI 2014

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