Title :
Stochastic convergence of stack filters and Boolean networks
Author_Institution :
IBM Corp., Austin, TX, USA
Abstract :
Stack filters are a large class of nonlinear filters that include median and ranked-order filters. Usually, these filters are analyzed in terms of their invariant signals and their convergence behavior. Convergence refers to whether iterative application of a stack filter to a signal will make it converge to an invariant signal. Previous convergence results have been deterministic results for limited classes of stack filters. In these results, the “visiting strategy” for the filter kernel as it filters a signal is arbitrary, but known a priori. Here, we use a new stochastic approach, with randomly evolving visiting strategies, that applies to all stack filters. We show that, within this framework, all stack filters make all input signals converge almost surely. A result for Boolean networks follows as a corollary
Keywords :
convergence of numerical methods; filtering theory; iterative methods; median filters; nonlinear filters; stochastic processes; Boolean networks; convergence behavior; filter kernel; invariant signal; invariant signals; iterative application; median filters; nonlinear filters; ranked-order filters; stack filters; stochastic convergence; visiting strategy; Convergence; Kernel; Limit-cycles; Neural networks; Nonlinear filters; Stochastic processes;
Conference_Titel :
Image Processing, 1994. Proceedings. ICIP-94., IEEE International Conference
Conference_Location :
Austin, TX
Print_ISBN :
0-8186-6952-7
DOI :
10.1109/ICIP.1994.413425