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Camera Calibration by Hybrid Hopfield Network and Self- Adaptive Genetic Algorithm Cover

Camera Calibration by Hybrid Hopfield Network and Self- Adaptive Genetic Algorithm

Open Access
|Dec 2012

Abstract

A new approach based on hybrid Hopfield neural network and self-adaptive genetic algorithm for camera calibration is proposed. First, a Hopfield network based on dynamics is structured according to the normal equation obtained from experiment data. The network has 11 neurons, its weights are elements of the symmetrical matrix of the normal equation and keep invariable, whose input vector is corresponding to the right term of normal equation, and its output signals are corresponding to the fitting coefficients of the camera’s projection matrix. At the same time an innovative genetic algorithm is presented to get the global optimization solution, where the cross-over probability and mutation probability are tuned self-adaptively according to the evolution speed factor in longitudinal direction and the aggregation degree factor in lateral direction, respectively. When the system comes to global equilibrium state, the camera’s projection matrix is estimated from the output vector of the Hopfield network, so the camera calibration is completed. Finally, the precision analysis is carried out, which demonstrates that, as opposed to the existing methods, such as Faugeras’s, the proposed approach has high precision, and provides a new scheme for machine vision system and precision manufacture.

Language: English
Page range: 302 - 308
Published on: Dec 15, 2012
In partnership with: Paradigm Publishing Services
Publication frequency: Volume open

© 2012 Wen-Jiang Xiang, Zhi-Xiong Zhou, Dong-Yuan Ge, Qing-Ying Zhang, Qing-He Yao, published by Slovak Academy of Sciences, Institute of Measurement Science
This work is licensed under the Creative Commons License.