Actas de congresos
Camera calibration using detection and neural networks
Fecha
2013-01-01Registro en:
IFAC Proceedings Volumes (IFAC-PapersOnline), v. 46, n. 7, p. 245-250, 2013.
1474-6670
10.3182/20130522-3-BR-4036.00077
2-s2.0-84881062284
Autor
Federal Techonological University of Paraná
Universidade Estadual Paulista (UNESP)
Institución
Resumen
Several applications use robotic vision, such as a robot navigating through an unknown surrounding, can use vision as main navigate sensor. This paper focuses on studying camera calibration via stereo vision by means of neural network. A neurocalibration method is proposed based on the neural networks ability to learn nonlinear relationship among a two and three dimension coordinate systems and also its information generalization skill. The data used to train neural network mapping are generated from a calibration grid point obtained through the use of Harris edge detection algorithm. The experimental results indicated that the neurocalibration method is feasible and efficient. © 2013 IFAC.