Use this resource - and many more! - in your textbook!
AcademicPub holds over eight million pieces of educational content for you to mix-and-match your way.

A Fast SAR Image Segmentation Algorithm Based on Particle Swarm Optimization and Grey Entropy
By: Miao Ma; Yanjing Lu; Hongpeng Tian; Yanning Zhang;
2008 / IEEE / 978-0-7695-3304-9
Description
This item was taken from the IEEE Conference ' A Fast SAR Image Segmentation Algorithm Based on Particle Swarm Optimization and Grey Entropy ' To speed up the segmentation procedure and improve the segmentation quality of SAR image, the paper suggests a PSOGE algorithm, which is based on particle swarm optimization and grey entropy. In the algorithm, after a filtered image and a gradient image are deduced from the origin SAR image respectively, their grey-level co-occurrence matrix is constructed. On the basis of the matrix, a grey entropy based fitness function is designed for Particle Swarm Optimization (PSO). And then, after several groups of thresholds and their moving speeds are acquired by the initialization of the particle swarm, all of the particles change positions iteratively and concurrently, and approach to the best threshold, depending on two types of experiences: personal best and global best experiences. The experimental results indicate that the algorithm not only shortens the segmenting time obviously, but also ignores the disturbance of inherent speckle in SAR image.
Related Topics
Particle Swarm Optimisation
Radar Imaging
Fitness Function
Sar Image Segmentation Algorithm
Particle Swarm Optimization
Grey Entropy
Psoge Algorithm
Gradient Image
Grey-level Cooccurrence Matrix
Image Segmentation
Particle Swarm Optimization
Entropy
Speckle
Computer Science
Image Analysis
Synthetic Aperture Radar
Paper Technology
Iterative Algorithms
Image Quality
Entropy
Sar
Image Segmentation
Pso
Matrix Algebra
Image Segmentation
Grey Systems
Synthetic Aperture Radar
Engineering
Filtered Image