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Infrared dim small target track predicting using least squares support vector machine

机译:使用最小二乘支持向量机预测红外昏暗的小目标轨道

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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 regularization parameter y and the kernel width parameter σ~2. Since the optimization parameters (γ,σ~2) 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.
机译:与支持向量机(SVM)相比,最小二乘支持向量机(LS-SVM)通过求解线性方程,克服了更高的计算负担的缺点,并且已广泛用于分类和非线性函数估计。对于在IR图像序列中预测的昏暗小目标轨道,提出了一种基于LS-SVM的新方法。 LS-SVM在模型选择,过度装配克服和局部最小克服方面具有突出的优势。在本文中,RBF内核功能用于LS-SVM,因此LS-SVM中有两个参数:正则化参数Y和内核宽度参数σ〜2。由于优化参数(γ,σ〜2)确定LS-SVM的性能,因此在本文中分析了它们对LS-SVM性能的影响。最后,与最小二乘(LS)估计相比,实验表明,LS-SVM可以比LS更精确地追踪目标。实验表明,基于LS-SVM的轨道预测方法通过少量样品具有强烈的学习能力,泛化的良好特性和随机噪声的拒绝。它是一种潜在的轨道预测方法。

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