Self-Adaptive Hybrid PSO-GA Method for Change Detection Under Varying Contrast Conditions in Satellite Images
Kusetogullari, Huseyin and Yavariabdi, Amir
Loading
Abstract
This paper proposes a new unsupervised satellite change detection
method, which is robust to illumination changes. To achieve this,
firstly, a preprocessing strategy is used to remove illumination
artifacts and results in less false detection than traditional
threshold-based algorithms. Then, we use the corrected input data to
define a new fitness function based on the difference image. The purpose
of using Self-Adaptive Hybrid Particle Swarm Optimization-Genetic
Algorithm (SAPSOGA) is to combinne two meta-heuristic optimization
algorithms to search and find the feasible solution in the NP-hard
change detection problem rapidly and efficiently. The hybrid algorithm
is employed by letting the GA and PSO run simultaneously and
similarities of GA and PSO have been considered to implement the
algorithm, i.e. the population. In the SAPSOGA employed, in each
iteration/generation the two population based algorithms share different
amount of information or individual(s) between themselves. Thus, each
algorithm informs each other about their best optimum results (fitness
values and solution representations) which are obtained in their own
population. The fitness function is minimized by using binary based
SAPSOGA approach to produce binary change detection masks in each
iteration to obtain the optimal change detection mask between two multi
temporal multi spectral landsat images. The proposed approach
effectively optimizes the change detection problem and finds the final
change detection mask.... Show more Show less