Pessoa L C, Maragos P
Motorola Inc., Austin, TX 78721, USA.
IEEE Trans Image Process. 1998;7(7):966-78. doi: 10.1109/83.701150.
A class of morphological/rank/linear (MRL)-filters is presented as a general nonlinear tool for image processing. They consist of a linear combination between a morphological/rank filter and a linear filter. A gradient steepest descent method is proposed to optimally design these filters, using the averaged least mean squares (LMS) algorithm. The filter design is viewed as a learning process, and convergence issues are theoretically and experimentally investigated. A systematic approach is proposed to overcome the problem of nondifferentiability of the nonlinear filter component and to improve the numerical robustness of the training algorithm, which results in simple training equations. Image processing applications in system identification and image restoration are also presented, illustrating the simplicity of training MRL-filters and their effectiveness for image/signal processing.
提出了一类形态学/秩/线性(MRL)滤波器,作为一种通用的非线性图像处理工具。它们由形态学/秩滤波器与线性滤波器之间的线性组合构成。提出了一种梯度最速下降法,利用平均最小均方(LMS)算法对这些滤波器进行优化设计。滤波器设计被视为一个学习过程,并从理论和实验上研究了收敛问题。提出了一种系统方法来克服非线性滤波器组件的不可微性问题,并提高训练算法的数值鲁棒性,从而得到简单的训练方程。还介绍了在系统辨识和图像恢复中的图像处理应用,说明了训练MRL滤波器的简便性及其在图像/信号处理中的有效性。