IEEE Trans Neural Netw Learn Syst. 2018 Dec;29(12):5935-5946. doi: 10.1109/TNNLS.2018.2814824. Epub 2018 Apr 9.
The robust Huber's M-estimator is widely used in signal and image processing, classification, and regression. From an optimization point of view, Huber's M-estimation problem is often formulated as a large-sized quadratic programming (QP) problem in view of its nonsmooth cost function. This paper presents a generalized regression estimator which minimizes a reduced-sized QP problem. The generalized regression estimator may be viewed as a significant generalization of several robust regression estimators including Huber's M-estimator. The performance of the generalized regression estimator is analyzed in terms of robustness and approximation accuracy. Furthermore, two low-dimensional recurrent neural networks (RNNs) are introduced for robust estimation. The two RNNs have low model complexity and enhanced computational efficiency. Finally, the experimental results of two examples and an application to image restoration are presented to substantiate superior performance of the proposed method over conventional algorithms for robust regression estimation in terms of approximation accuracy and convergence rate.
鲁棒的 Huber M 估计器在信号和图像处理、分类和回归中得到了广泛应用。从优化的角度来看,由于其非光滑的代价函数,Huber M 估计问题通常被表述为一个大型二次规划(QP)问题。本文提出了一种广义回归估计器,它可以最小化一个缩小尺寸的 QP 问题。广义回归估计器可以看作是几个鲁棒回归估计器的重要推广,包括 Huber M 估计器。从鲁棒性和逼近精度两个方面对广义回归估计器的性能进行了分析。此外,还介绍了两种用于鲁棒估计的低维递归神经网络(RNN)。这两个 RNN 具有低模型复杂度和增强的计算效率。最后,通过两个示例的实验结果和一个图像恢复的应用,证明了所提出的方法在鲁棒回归估计方面的逼近精度和收敛速度方面优于传统算法。