DocumentCode :
3558471
Title :
Adaptive image segmentation using genetic and hybrid search methods
Author :
Bhanu, Bir ; Lee, Sungkee ; Das, Subhodev
Author_Institution :
California Univ., Riverside, CA, USA
Volume :
31
Issue :
4
fYear :
1995
Firstpage :
1268
Lastpage :
1291
Abstract :
This paper describes an adaptive approach for the important image processing problem of image segmentation that relies on learning from experience to adapt and improve the segmentation performance. The adaptive image segmentation system incorporates a feedback loop consisting of a machine learning subsystem, an image segmentation algorithm, and an evaluation component which determines segmentation quality. The machine learning component is based on genetic adaptation and uses (separately) a pure genetic algorithm (GA) and a hybrid of GA and hill climbing (HC). When the learning subsystem is based on pure genetics, the corresponding evaluation component is based on a vector of evaluation criteria. For the hybrid case, the system employs a scalar evaluation measure which is a weighted combination of the different criteria. Experimental results for pure genetic and hybrid search methods are presented using a representative database of outdoor TV imagery. The multiobjective optimization demonstrates the ability of the adaptive image segmentation system to provide high quality segmentation results in a minimal number of generations.<>
Keywords :
adaptive signal processing; genetic algorithms; image segmentation; learning (artificial intelligence); search problems; Phoenix algorithm; adaptive image segmentation; evaluation component; feedback loop; genetic adaptation; hill climbing; hybrid search method; learning from experience; machine learning subsystem; multiobjective optimization; outdoor TV imagery; pure genetic algorithm; scalar evaluation measure; segmentation quality; vector of evaluation criteria; Adaptive systems; Feedback loop; Genetic algorithms; Image databases; Image processing; Image segmentation; Machine learning; Machine learning algorithms; Search methods; TV;
fLanguage :
English
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9251
Type :
jour
DOI :
10.1109/7.464350
Filename :
464350
Link To Document :
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