Summarization: Elitism is a variant of genetic algorithms which enables quicker convergence to the global optimum by preserving the best solutions of the current generation and passing them either unchanged or slightly changed to the next one. This guarantees that in each generation the best elements will be, at least, as good as those of the previous one. As it happens with many stochastic algorithms, Elitism has been used in image registration software and systems. Yet, to the best of our knowledge, no one has investigated its optimization potential in intensity-based image registration with respect to the number of the elites that is allowed to be reserved in the next generation and its connection to the mutation rate. In this paper, a s...
Image registration is one of the most important image processing tools enabling recognition, classif...
In recent years the genetic algorithm community has shown a growing interest in studying dynamic opt...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
Summarization: Evolutionary algorithms are metaheuristic algorithms that mimic biological mechanisms...
Metaheuristics are techniques that use approximate and intuitive strategies to quickly find near-opt...
Summarization: Evolutionary algorithms have been used recently as an alternative in image registrati...
Summarization: Evolutionary computation has been widely used in intensity-based medical image regist...
Preserving elitism is found to be an important issue in the study of evolutionary multi-objective op...
It can be argued that image registration is a ubiquitous computer vision task, playing a crucial rol...
textabstractDeformable image registration is currently predominantly solved by optimizing a weighted...
The recently introduced Gene-pool Optimal Mixing Evolutionary Algorithm (GOMEA) for discrete variabl...
Most discrete evolutionary algorithms (EAs) implement elitism, meaning that they make the biological...
textabstractTaking a multi-objective optimization approach to deformable image registration has rece...
This paper describes a new genetic approach called the structured genetic algorithm (sGA) for automa...
We present a stochastic gradient descent optimisation method for image registration with adaptive st...
Image registration is one of the most important image processing tools enabling recognition, classif...
In recent years the genetic algorithm community has shown a growing interest in studying dynamic opt...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...
Summarization: Evolutionary algorithms are metaheuristic algorithms that mimic biological mechanisms...
Metaheuristics are techniques that use approximate and intuitive strategies to quickly find near-opt...
Summarization: Evolutionary algorithms have been used recently as an alternative in image registrati...
Summarization: Evolutionary computation has been widely used in intensity-based medical image regist...
Preserving elitism is found to be an important issue in the study of evolutionary multi-objective op...
It can be argued that image registration is a ubiquitous computer vision task, playing a crucial rol...
textabstractDeformable image registration is currently predominantly solved by optimizing a weighted...
The recently introduced Gene-pool Optimal Mixing Evolutionary Algorithm (GOMEA) for discrete variabl...
Most discrete evolutionary algorithms (EAs) implement elitism, meaning that they make the biological...
textabstractTaking a multi-objective optimization approach to deformable image registration has rece...
This paper describes a new genetic approach called the structured genetic algorithm (sGA) for automa...
We present a stochastic gradient descent optimisation method for image registration with adaptive st...
Image registration is one of the most important image processing tools enabling recognition, classif...
In recent years the genetic algorithm community has shown a growing interest in studying dynamic opt...
This paper derives a theoretical limit for image registration and presents an iterative estimator th...