Materka A, Mizushina S
Department of Electrical and Computer Systems Engineering, Monash University, Melbourne (Caulfield East), Australia.
IEEE Trans Biomed Eng. 1996 Apr;43(4):357-72. doi: 10.1109/10.486256.
The problem of parametric signal restoration given its blurred/nonlinearly distorted version contaminated by additive noise is discussed. It is postulated that feedforward artificial neural networks can be used to find a solution to this problem. The proposed estimator does not require iterative calculations that are normally performed using numerical methods for signal parameter estimation. Thus high speed is the main advantage of this approach. A two-stage neural network-based estimator architecture is considered in which the vector of measurements is projected on the signal subspace and the resulting features form the input to a feedforward neural network. The effect of noise on the estimator performance is analyzed and compared to the least-squares technique. It is shown, for low and moderate noise levels, that the two estimators are similar to each other in terms of their noise performance, provided the neural network approximates the inverse mapping from the measurement space to the parameter space with a negligible error. However, if the neural network is trained on noisy signal observations, the proposed technique is superior to the least-squares estimate (LSE) model fitting. Numerical examples are presented to support the analytical results. Problems for future research are addressed.
讨论了在给定其被加性噪声污染的模糊/非线性失真版本的情况下,参数信号恢复的问题。假设前馈人工神经网络可用于找到该问题的解决方案。所提出的估计器不需要使用信号参数估计的数值方法通常执行的迭代计算。因此,高速是这种方法的主要优点。考虑了一种基于神经网络的两阶段估计器架构,其中测量向量投影到信号子空间上,所得特征构成前馈神经网络的输入。分析了噪声对估计器性能的影响,并与最小二乘法进行了比较。结果表明,对于低和中等噪声水平,只要神经网络以可忽略的误差逼近从测量空间到参数空间的逆映射,这两种估计器在噪声性能方面彼此相似。然而,如果神经网络是在有噪声的信号观测上进行训练的,那么所提出的技术优于最小二乘估计(LSE)模型拟合。给出了数值例子以支持分析结果。还讨论了未来研究的问题。