Imrovement of genetic operators using restoration method and evaluation function for noise degradation

잡음훼손에 적합한 평가함수와 복원기법을 이용한 유전적 연산자의 개선

  • 김승목 (영남대학교 전기전자공학부) ;
  • 조영창 (영남대학교 전기전자공학부) ;
  • 이태홍 (영남대학교 전기전자공학부)
  • Published : 1997.05.01

Abstract

For the degradation of severe noise and ill-conditioned blur the optimization function has the solution spaces which have many local optima around global solution. General restoration methods such as inverse filtering or gradient methods are mainly dependent on the properties of degradation model and tend to be isolated into a local optima because their convergences are determined in the convex space. Hence we introduce genetic algorithm as a searching method which will search solutions beyond the convex spaces including local solutins. In this paper we introudce improved evaluation square error) and fitness value for gray scaled images. Finally we also proposed the local fine tunign of window size and visit number for delicate searching mechanism in the vicinity of th global solution. Through the experiental results we verified the effectiveness of the proposed genetic operators and evaluation function on noise reduction over the conventional ones, as well as the improved performance of local fine tuning.

Keywords