Full text: XVIIIth Congress (Part B3)

     
  
   
  
     
    
    
    
    
    
  
  
  
  
  
  
  
    
    
    
    
   
   
    
    
   
   
    
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Figure.3 Possible changing patterns of landuse classes in temporal and spatial distribution 
observation. Observational location and time/frequency can 
be represented by locating observational pixel in the two 
dimensional string. Spatio-temporal resolutions can be 
represented by setting an aggregation formula over the range 
of observation. 
3) Total Fitness: Total fitness is computed from 
behavioral fitness and observational fitness by the following 
formula. Total fitness = Behavioral fitness * Observational 
fitness or In(Total fitness) = In(Behavioral fitness)+In 
(Observational fitness) 
No 
Observational Fitness = IT PCC 
n= 
Po, (Cp 7 Cp r05,) : Probability that observational value 
C v ros i$ given when actual value is C »z 
3.4 Definition of Operators 
3.4.1 Reproduction 
Reproduction is a process in which individual strings 
are copied according to their objective function values or 
the fitness values. Copying strings according to their fitness 
values means that strings with a higher value have a higher 
probability of contributing one or more offspring in the next 
generation (Figure.4). This operators, realizing an artificial 
version of natural selection, a Darwinian survival of the 
fittest among string creatures. 
    
duplicate 
Individual with High Fitness Value 
Figure.4 Reproduction of Individual 
There are several proposals for selecting survival 
individuals. The most basic scheme is called the roulette 
wheel scheme, the deterministic sampling and the elitist 
scheme. In order to efficiently find the best solution in a 
search space, in our search, we proposed the selection 
scheme based on the combination of the deterministic 
sampling and the elitist scheme. The selected survival 
possibility in next generation of each individual is calculated 
as in the deterministic sampling. And the best individual is 
kept into the next generation as in the elite scheme. 
3.4.2 Crossover 
Crossover operator first randomly mates newly 
reproduced individuals in the mating pool. Then it randomly 
locates a window with random size for a pair of individuals. 
Finally, the contents of individuals within the window are 
swapped to create new individuals (Figure.5). 
  
  
  
  
  
  
  
  
  
  
Individual! „“ Individual2 
Figure.5 Crossover of Individuals 
  
  
3.4.3 Mutation 
Mutation operator plays a secondary role in the 
simple GA. It occasionally alters the value in a individual 
position (Figure.6). 
  
  
' a 
' 1 
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Fe % Az al LA 
Team Amen 
$ 1) 1 ° tL 
= pan = T LT 
e e 
d (3 change | .° 
°° Individual D? 
  
  
  
  
  
  
Figure.6 Mutation of One Individual 
4. IMPROVEMENT OF THE SEARCH IN GAs 
4.1 Hill-Climbing method to improve the efficiency of 
genetic algorithm 
Searching a complex space of problem resolutions 
often involves a tradeoff between two apparently conflicting 
objectives: exploiting the best solutions currently available 
and robustly exploring the space (Lashon Booker, GA&SA). 
Generic algorithms have been toured as a class general 
purpose search strategies that strike a reasonable balance 
between exploration and exploitation. The power of these 
algorithms is derived from a very simple heuristic 
assumption: that the best solutions will be found in regions 
806 
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B3. Vienna 1996 
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