ICYTE   26279
INSTITUTO DE INVESTIGACIONES CIENTIFICAS Y TECNOLOGICAS EN ELECTRONICA
Unidad Ejecutora - UE
artículos
Título:
Artificial Bee Colony Optimization for Feature Selection of Traffic Sign Recognition
Autor/es:
BASTOS-FILHO, CARMELO J. A.; SEIJAS, LETICIA M.; DA SILVA, DIOGO L.
Revista:
International Journal of Swarm Intelligence Research
Editorial:
IGI Global
Referencias:
Año: 2017 vol. 8 p. 50 - 66
ISSN:
1947-9263
Resumen:
This paper proposes the application of a swarm intelligence algorithm called Artificial Bee Colony (ABC) for the feature selection to feed a Random Forest (RF) classifier aiming to recognise Traffic Signs. In this paper, we define and assess several fitness functions for the feature selection stage. The idea is to minimise the correlation and maximise the entropy of a set of masks to be used for feature extraction results in a higher information gain and allows to reach recognition accuracies comparable with other state-of-art algorithms. The RF comprises as a committee based on decision trees, which allows handling large datasets and features with high performance, enabling a Traffic Sign Recognition (TSR) system oriented for real-time implementations. The German Traffic Sign Recognition Benchmark (GTSRB) was used for experiments, serving as a real basis for comparison of performance for our proposal.