Wang Zhishun, He Zhenya, Chen Jiande D Z
Department of Child Psychiatry and Brain Imaging, Columbia University and NYSPI, New York, NY 10032, USA.
IEEE Trans Biomed Eng. 2005 Mar;52(3):454-62. doi: 10.1109/TBME.2004.843287.
The time delay estimation (TDE) is an important issue in modern signal processing and it has found extensive applications in the spatial propagation feature extraction of biomedical signals as well. Due to the extreme complexity and variability of the underlying systems, biomedical signals are usually nonstationary, unstable and even chaotic. Furthermore, due to the limitations of the measurement environments, biomedical signals are often noise-contaminated. Therefore, the TDE of biomedical signals is a challenging issue. A new TDE algorithm based on the least absolute deviation neural network (LADNN) and its application experiments are presented in this paper. The LADNN is the neural implementation of the least absolute deviation (LAD) optimization model, also called unconstrained minimum L1-norm model, with a theoretically proven global convergence. In the proposed LADNN-based TDE algorithm, a given signal is modeled using the moving average (MA) model. The MA parameters are estimated by using the LADNN and the time delay corresponds to the time index at which the MA coefficients have a peak. Due to the excellent features of L1-norm model superior to Lp-norm (p > 1) models in non-Gaussian noise environments or even in chaos, especially for signals that contain sharp transitions (such as biomedical signals with spiky series or motion artifacts) or chaotic dynamic processes, the LADNN-based TDE is more robust than the existing TDE algorithms based on wavelet-domain correlation and those based on higher-order spectra (HOS). Unlike these conventional methods, especially the current state-of-the-art HOS-based TDE, the LADNN-based method is free of the assumption that the signal is non-Gaussian and the noises are Gaussian and, thus, it is more applicable in real situations. Simulation experiments under three different noise environments, Gaussian, non-Gaussian and chaotic, are conducted to compare the proposed TDE method with the existing HOS-based method. Real application experiment is conducted to extract time delay information between every two adjacent channels of gastric myoelectrical activity (GMA) to assess the spatial propagation characteristics of GMA during different phases of the migrating myoelectrical complex (MMC).
时间延迟估计(TDE)是现代信号处理中的一个重要问题,它在生物医学信号的空间传播特征提取中也有广泛应用。由于基础系统极其复杂且多变,生物医学信号通常是非平稳、不稳定甚至混沌的。此外,由于测量环境的限制,生物医学信号常常受到噪声污染。因此,生物医学信号的TDE是一个具有挑战性的问题。本文提出了一种基于最小绝对偏差神经网络(LADNN)的新型TDE算法及其应用实验。LADNN是最小绝对偏差(LAD)优化模型的神经实现,也称为无约束最小L1范数模型,具有理论上已证明的全局收敛性。在所提出的基于LADNN的TDE算法中,使用移动平均(MA)模型对给定信号进行建模。通过LADNN估计MA参数,时间延迟对应于MA系数出现峰值的时间索引。由于L1范数模型在非高斯噪声环境甚至混沌环境中优于Lp范数(p>1)模型的优异特性,特别是对于包含尖锐转变的信号(如具有尖峰序列或运动伪影的生物医学信号)或混沌动态过程,基于LADNN的TDE比现有的基于小波域相关性和基于高阶谱(HOS)的TDE算法更稳健。与这些传统方法不同,特别是当前基于HOS的最先进的TDE,基于LADNN的方法无需假设信号是非高斯的且噪声是高斯的,因此,它在实际情况中更适用。进行了三种不同噪声环境(高斯、非高斯和混沌)下的仿真实验,以将所提出的TDE方法与现有的基于HOS的方法进行比较。进行了实际应用实验,以提取胃肌电活动(GMA)每两个相邻通道之间的时间延迟信息,以评估移行性肌电复合波(MMC)不同阶段GMA的空间传播特征。