Title
Cellular Automata for Elementary Image Enhancement
Abstract
We study various cellular automata as algorithms for elementary image enhancement, which refers to methods used to improve features of an image without previous information about them that can be implemented by straightforward techniques. Cellular automata appear as natural tools for image processing due to their local nature and simple parallel computer implementation. For this reason various cellular automata algorithms for sharpening and smoothing are presented and studied in this context. Their dynamical behavior is characterized for sequential and parallel updating by associating to them strictly decreasing functionals with the dynamics of the automata. Since tight bounds for the transient time usually cannot be obtained from these operators, a numerical study is needed to analyze their typical performance and effects. For this purpose we compare them with the classical methods for real two dimensional images in terms of convergence rate, effects, and stability in front of noise. The cellular automata methods studied present very fast convergence to fixed points, noise stability, and improvements on real images, which are features that allow us to propose them as a first level elementary image enhancement.
Year
DOI
Venue
1996
10.1006/gmip.1996.0006
Graphical Models and Image Processing
Keywords
Field
DocType
cellular automata,fixed point,image processing,parallel computer,convergence rate
Quantum finite automata,Cellular automaton,Continuous spatial automaton,GrowCut algorithm,Parallel algorithm,Algorithm,Image processing,Smoothing,Real image,Mathematics
Journal
Volume
Issue
ISSN
58
1
1077-3169
Citations 
PageRank 
References 
31
4.46
0
Authors
2
Name
Order
Citations
PageRank
Gonzalo Hernández1314.46
Hans J. Herrmann218617.58