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基于局部保持投影和RBF神经网络的DOA估计 被引量:5

DOA Estimation Based on RBFNN and LPP
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摘要 提出了一种有效的降维构建方法改善来波到达角(DOA)估计的性能。该方法利用局部保持投影(LPP)对DOA估计用的神经网络的训练样本进行降维,以降低神经网络的复杂度,加快神经网络的训练过程。与常用的协方差矩阵上三角特征相比,在不损失有效方位信息的基础上,可以使特征维数极大地降低。数值实验表明,基于局部保持投影和神经网络的方法具有良好的估计精度和效率,同时对噪声也有较强的适应能力,能够很好地满足波达方向估计实时性的要求。 An effective dimension reduction method is proposed to improve the performance of direction of arrival (DOA) estimation. The method applies Locality Preserving Projection (LPP) to optimize the neural network for the DOA estimation. The purpose of LPP is to reduce the training samples and the complexity of the neural net- work. Compared with the commonly used upper triangular half of the covariance matrix, the method can reduce the feature dimension without losing any DOA information. Simulation results indicate that the performance of the pro- posed method based on LPP and RBF neural network is much better than that of the traditional methods in terms of estimation precision and efficiency. Furthermore, it is not sensitive about the noise. The proposed method can sat- isfy the real-time requirements of the DOA estimation.
出处 《科学技术与工程》 北大核心 2013年第24期7054-7058,共5页 Science Technology and Engineering
基金 船舶工业国防科技预研基金项目(10J3.5.2) 江苏省青蓝工程项目 江苏高校优势学科建设工程项目资助
关键词 波达角估计 降维 局部保持投影 神经网络 DOA estimation dimension reduction locality preserving projection neural network
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  • 1杨超,邱文杰.自适应天线中阵元间互耦的校正[J].电子学报,1993,21(3):58-62. 被引量:19
  • 2安冬,王守觉.基于仿生模式识别的DOA估计方法[J].电子与信息学报,2004,26(9):1468-1473. 被引量:11
  • 3陈辉,苏海军.强干扰/信号背景下的DOA估计新方法[J].电子学报,2006,34(3):530-534. 被引量:50
  • 4Jolliffe I T.Principal component analysis[M].New York:Springer- Verlag, 1989.
  • 5Scholkopf B, Smola A.Nonlinear component analysis as a kernel eigenvalue problem[J].Neural Computation, 1998, 10 ( 5 ) : 1299-1319.
  • 6Zhao Haitao, Sun Shaoyuan.Local structure based supervised feature extraction[J].Pattern Recognition, 2006,39 (12) : 1546-1550.
  • 7He Xiaofei, Yan Shuicheng, Hu Yuxiao.Face recognition using Laplacianfaces[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2005,27(3) :328-340.
  • 8Roweis S T, Saul L K.Nonlinear dimensionality reduction by locally linear embedding[J].Science, 2000,290 (5500) : 2323-2326.
  • 9He X F, Niyogi ELocality preserving projections[C]//Proc Conf Advances in Neural Information Processing Systems(NIPS'03), 2003.
  • 10Belkin M, Niyogi P.Laplacian eigenmaps for dimensionality reduction and data representation[J].Neural Computation,2003, 15 (6) : 1373-1396.

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  • 1常瑞花.基于密集度量元的近邻传播聚类算法[J].微电子学与计算机,2015,32(5):1-5. 被引量:1
  • 2ZHU Weiqing LIU Xiaodong ZHANG Dongsheng LIAO Zheng ZHANG Fangsheng.Estimating the directions of arrival based on multi-subarray subspace fitting[J].Chinese Journal of Acoustics,2006,25(1):16-25. 被引量:7
  • 3ROY R,KAILATH T. ESPRIT-estimation of signal pa-rameters via rotational invariance techniques[J]. IEEETransactions on Acoustics Speech & Signal Processing,1989,37(7):984 - 995.
  • 4VIGNESHWARAN S,SUNDARARAJAN N,SARATCHAND-RAN P. Direction of arrival(DoA) estimation under arraysensor failures using a minimal resource allocation neuralnetwork[J]. IEEE Transactions on Antennas and Propa-gation,2007,55(2):334-343.
  • 5PASTORINO M,RANDAZZO A. A smart antenna systemfor direction of arrival estimation based on a support vec-tor regression[J]. IEEE Transactions on Antennas andPropagation,2005,53(7):2161-2168.
  • 6RANDAZZO A,ABOU-KHOUSA M A,PASTORINO M,et al. Direction of arrival estimation based on support vec-tor regression: experimental validation and comparisonwith MUSIC[J]. IEEE Antennas and Wireless Propaga-tion Letters,2007(6):379-382.
  • 7SEETHA H, SARAVANAN R, MURTY M N. Patternsynthesis using multiple kernel learning for efficient SVMclassification[J]. Cybernetics and Information Technolo-gies,2013(12):77-94.
  • 8VAPNIK V N. The nature of statistical learning theory[J]. IEEE Transactions on Neural Networks,195,10(5):988-999.
  • 9VAPNIK V. Statistical learning theory[M]. New York:Wiley-Interscience,1998.
  • 10SCH魻LKOPF B,SMOLA A. Learning with kernels:sup-port vector machines, regularization, optimization, andbeyond[J]. Journal of the American Statistical Associa-tion,2003,98(3):489-489.

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