Accurate point matching based on multi-objective genetic algorithm for multi-sensor satellite imagery

J Senthilnath, NP Kalro, JA Benediktsson - Applied Mathematics and …, 2014 - Elsevier
Applied Mathematics and Computation, 2014Elsevier
This paper investigates a novel approach for point matching of multi-sensor satellite
imagery. The feature (corner) points extracted using an improved version of the Harris
Corner Detector (HCD) is matched using multi-objective optimization based on a Genetic
Algorithm (GA). An objective switching approach to optimization that incorporates an angle
criterion, distance condition and point matching condition in the multi-objective fitness
function is applied to match corresponding corner-points between the reference image and …
Abstract
This paper investigates a novel approach for point matching of multi-sensor satellite imagery. The feature (corner) points extracted using an improved version of the Harris Corner Detector (HCD) is matched using multi-objective optimization based on a Genetic Algorithm (GA). An objective switching approach to optimization that incorporates an angle criterion, distance condition and point matching condition in the multi-objective fitness function is applied to match corresponding corner-points between the reference image and the sensed image. The matched points obtained in this way are used to align the sensed image with a reference image by applying an affine transformation. From the results obtained, the performance of the image registration is evaluated and compared with existing methods, namely Nearest Neighbor–Random SAmple Consensus (NN–RanSAC) and multi-objective Discrete Particle Swarm Optimization (DPSO). From the performed experiments it can be concluded that the proposed approach is an accurate method for registration of multi-sensor satellite imagery.
Elsevier