EURASIP Journal on Advances in Signal Processing (Jul 2004)

Optimizing Statistical Character Recognition Using Evolutionary Strategies to Recognize Aircraft Tail Numbers

  • Antonio Berlanga,
  • Juan A. Besada,
  • Jesús García Herrero,
  • José M. Molina,
  • Javier I. Portillo,
  • José R. Casar

DOI
https://doi.org/10.1155/S1687617204312084
Journal volume & issue
Vol. 2004, no. 8
pp. 1125 – 1134

Abstract

Read online

The design of statistical classification systems for optical character recognition (OCR) is a cumbersome task. This paper proposes a method using evolutionary strategies (ES) to evolve and upgrade the set of parameters in an OCR system. This OCR is applied to identify the tail number of aircrafts moving on the airport. The proposed approach is discussed and some results are obtained using a benchmark data set. This research demonstrates the successful application of ES to a difficult, noisy, and real-world problem.

Keywords