Lin Bor-Shyh, Lin Bor-Shing, Chong Fok-Ching, Lai Feipei
Institute of Electrical Engineering, National Taiwan University, Taipei 10617, Taiwan.
IEEE Trans Neural Netw. 2007 May;18(3):823-32. doi: 10.1109/TNN.2007.891185.
In this paper, a higher-order-statistics (HOS)-based radial basis function (RBF) network for signal enhancement is introduced. In the proposed scheme, higher order cumulants of the reference signal were used as the input of HOS-based RBF. An HOS-based supervised learning algorithm, with mean square error obtained from higher order cumulants of the desired input and the system output as the learning criterion, was used to adapt weights. The motivation is that the HOS can effectively suppress Gaussian and symmetrically distributed non-Gaussian noise. The influence of a Gaussian noise on the input of HOS-based RBF and the HOS-based learning algorithm can be mitigated. Simulated results indicate that HOS-based RBF can provide better performance for signal enhancement under different noise levels, and its performance is insensitive to the selection of learning rates. Moreover, the efficiency of HOS-based RBF under the nonstationary Gaussian noise is stable.
本文介绍了一种基于高阶统计量(HOS)的用于信号增强的径向基函数(RBF)网络。在所提出的方案中,参考信号的高阶累积量被用作基于HOS的RBF的输入。一种基于HOS的监督学习算法,以从期望输入和系统输出的高阶累积量获得的均方误差作为学习准则,用于调整权重。其动机在于HOS能够有效抑制高斯噪声和对称分布的非高斯噪声。高斯噪声对基于HOS的RBF的输入和基于HOS的学习算法的影响可以得到减轻。仿真结果表明,基于HOS的RBF在不同噪声水平下能够为信号增强提供更好的性能,并且其性能对学习率的选择不敏感。此外,基于HOS的RBF在非平稳高斯噪声下的效率是稳定的。