利用核方法生成合成训练集改进ATR神经分类器

R. Gil-Pita, P. J. Amores, M. Rosa-Zurera, F. López-Ferreras
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引用次数: 10

摘要

神经网络在高分辨率雷达目标分类中的一个重要问题是训练数据难以获取。因此,训练集很小,使得对新数据的泛化变得困难。为了提高泛化能力,采用一种新的核函数方法估计每一类雷达目标的概率密度函数,得到合成雷达目标。多变量高斯函数的参数是位置和数据分布的函数。为了评估估计的准确性,将最大后验准则应用于雷达目标分类,并与k近邻分类器进行了比较。该方法的性能优于k近邻分类器,证明了估计的准确性。然后,使用估计的概率密度函数对合成数据进行分类,以便对神经网络使用监督训练算法。得到的结果表明,如果使用这种策略来增加训练数据的数量,神经网络的性能会更好。此外,与k近邻分类器相比,计算复杂度大大降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving neural classifiers for ATR using a kernel method for generating synthetic training sets
An important problem with the use of neural networks in HRR radar target classification is the difficulty in obtaining training data. Training sets are small because of this, making generalization to new data difficult. In order to improve generalization capability, synthetic radar targets are obtained using a novel kernel method for estimating the probability density function of each class of radar targets. Multivariate Gaussians whose parameters are a function of position and data distribution are used as kernels. In order to assess the accuracy of the estimate, the maximum a posteriori criterion has been used in radar target classification, and compared with the k-nearest-neighbour classifier. The proposed method performs better than the k-nearest-neighbour classifier, demonstrating the accuracy of the estimate. After that, the estimated probability density functions are used to classify the synthetic data in order to use a supervised training algorithm for neural networks. The obtained results show that neural networks perform better if this strategy is used to increase the number of training data. Furthermore, computational complexity is dramatically reduced compared with that of the k-nearest neighbour classifier.
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