Stereo vision camera calibration based on AGA-LS-SVM algorithm

Least Squares Support Vector Machines could satisfactorily describes the non-linear relationships between the image information and the 3D information. It doesn't need to confirm internal and external parameters of the camera. The kernel function parameter and penalty parameter is a pivotal factor which decides performance of LS-SVM. Most users select parameters for an LS-SVM by rule of thumb, which frequently fail to generate the optimal approaching effect for the function. In order to get optimal parameters automatically, an adaptive genetic algorithm is introduced to the LS-SVM algorithm,which automatically adjusts the parameters for LS-SVM. The experimental results show that X, Y axis error values of AGA-LS-SVM is smaller than LS-SVM by 2∼3 times, and Z axis error values of AGA-LS-SVM is smaller than LS-SVM by 10 times. The validity of improving the calibration accuracy is verified by experimental results.

[1]  Vladimir Cherkassky,et al.  The Nature Of Statistical Learning Theory , 1997, IEEE Trans. Neural Networks.

[2]  Aly A. Farag,et al.  A neural approach for single- and multi-image camera calibration , 1999, Proceedings 1999 International Conference on Image Processing (Cat. 99CH36348).

[3]  Junghee Jun,et al.  Robust camera calibration using neural network , 1999, Proceedings of IEEE. IEEE Region 10 Conference. TENCON 99. 'Multimedia Technology for Asia-Pacific Information Infrastructure' (Cat. No.99CH37030).

[4]  Lalit M. Patnaik,et al.  Adaptive probabilities of crossover and mutation in genetic algorithms , 1994, IEEE Trans. Syst. Man Cybern..

[5]  Roger Y. Tsai,et al.  A versatile camera calibration technique for high-accuracy 3D machine vision metrology using off-the-shelf TV cameras and lenses , 1987, IEEE J. Robotics Autom..

[6]  Malik Mallem,et al.  Automatic camera calibration based on robot calibration , 1999, IMTC/99. Proceedings of the 16th IEEE Instrumentation and Measurement Technology Conference (Cat. No.99CH36309).

[7]  Vladimir N. Vapnik,et al.  The Nature of Statistical Learning Theory , 2000, Statistics for Engineering and Information Science.

[8]  Robert B. Kelley,et al.  Camera Models Based on Data from Two Calibration Planes , 1981 .