TY - GEN
T1 - Infrared dim small target track predicting using least squares support vector machine
AU - Wang, Guangping
AU - Gao, Kun
AU - Ni, Guoqiang
PY - 2007
Y1 - 2007
N2 - Compared with Support Vector Machine (SVM), Least Squares Support Vector Machine (LS-SVM) has overcome the shortcoming of higher computational burden by solving linear equations, and has been widely used in classification and nonlinear function estimation. For dim small targets track predicting in the IR image sequences, a new method based on LS-SVM is proposed. LS-SVM has prominent advantages in model selecting, over-fitting overcoming and local minimum overcoming. In this paper, the RBF kernel function is used in LS-SVM, so there are two parameters in LS-SVM: the regularizaron parameter γ and the kernel width parameter σ2. Since the optimization parameters (γ, σ2) determine the performance of LS-SVM, so their influence on the performance of LS-SVM is analyzed in this paper. Finally, compared with the Least Square (LS) estimation, the experiments show that LS-SVM can track targets more precisely and more robustly than LS. Experiments show that the track predicting method based on LS-SVM possesses the strong learning capability through a small quantity of samples, the good characteristic of generalization and rejection to random noise. It is a potential track predicting method.
AB - Compared with Support Vector Machine (SVM), Least Squares Support Vector Machine (LS-SVM) has overcome the shortcoming of higher computational burden by solving linear equations, and has been widely used in classification and nonlinear function estimation. For dim small targets track predicting in the IR image sequences, a new method based on LS-SVM is proposed. LS-SVM has prominent advantages in model selecting, over-fitting overcoming and local minimum overcoming. In this paper, the RBF kernel function is used in LS-SVM, so there are two parameters in LS-SVM: the regularizaron parameter γ and the kernel width parameter σ2. Since the optimization parameters (γ, σ2) determine the performance of LS-SVM, so their influence on the performance of LS-SVM is analyzed in this paper. Finally, compared with the Least Square (LS) estimation, the experiments show that LS-SVM can track targets more precisely and more robustly than LS. Experiments show that the track predicting method based on LS-SVM possesses the strong learning capability through a small quantity of samples, the good characteristic of generalization and rejection to random noise. It is a potential track predicting method.
KW - LS-SVM
KW - RBF kernel function
KW - Target track predicting
UR - http://www.scopus.com/inward/record.url?scp=45549102264&partnerID=8YFLogxK
U2 - 10.1117/12.756581
DO - 10.1117/12.756581
M3 - Conference contribution
AN - SCOPUS:45549102264
SN - 9780819470102
T3 - Proceedings of SPIE - The International Society for Optical Engineering
BT - Infrared Materials, Devices, and Applications
T2 - Infrared Materials, Devices, and Applications
Y2 - 12 November 2007 through 15 November 2007
ER -