INVESTIGADORES
CHESÑEVAR Carlos Ivan
artículos
Título:
Automatic vehicle identification for Argentinean license plates using intelligent template matching
Autor/es:
NICOLÁS GAZCÓN; CARLOS IVÁN CHESÑEVAR; SILVIA CASTRO
Revista:
PATTERN RECOGNITION LETTERS
Editorial:
ELSEVIER SCIENCE BV
Referencias:
Lugar: Amsterdam; Año: 2012 vol. 33 p. 1066 - 1074
ISSN:
0167-8655
Resumen:
The problem of automatic number plate recognition (ANPR) has been studied from different aspects since the early 90s. Efficient approaches have been recently developed, particularly based on the features of the license plate representation used in different countries. This paper focuses on a novel approach to solving the ANPR problem for Argentinean license plates, called Intelligent Template Matching (ITM). We compare the performance obtained with other competitive approaches to robust pattern recognition (such as artificial neural networks), showing the advantages both in classification accuracy and training time. The approach can also be easily extended to other license plate representation systems different from the one used in Argentina.