This thesis deals with image classification based on genetic programming and coevolution. Genetic programming algorithms make generating executable structures possible, which allows us to design solutions in form of programs. Using coevolution with the fitness prediction lowers the amount of time consumed by fitness evaluation and, therefore, also the execution time. The thesis describes a theoretical background of evolutionary algorithms and, in particular, cartesian genetic programming. We also describe coevolutionary algorithms properties and especially the proposed method for the image classifier evolution using coevolution of fitness predictors, where the objective is to find a good compromise between the classification accuracy, desig...
Abstract. In this paper, a novel genetically-inspired visual learning method is proposed. Given the ...
In this thesis a novel approach to image classification is presented. The thesis explores the use of...
This Master's Thesis is focused on the principles of neural networks, primarily convolutional neural...
This thesis deals with evolutionary design of image classifier with help of genetic programming, spe...
This paper describes an approach to the use of genetic programming for multi-class image recognition...
Image classification is an important and fundamental task in computer vision and machine learning. T...
© 2019 IEEE. Evolutionary deep learning (EDL) as a hot topic in recent years aims at using evolution...
This thesis deals with image filter design using coevolutionary algorithms. It contains a descriptio...
This thesis deals with employing coevolutionary principles to the image filter design. Evolutionary ...
Cartesian genetic programming (CGP) is a form of genetic programming where candidate programs are re...
In this thesis a novel approach to image classification is presented. The thesis explores the use of...
Image classification is a popular task in machine learning and computer vision, but it is very chall...
IEEE Feature extraction is essential for solving image classification by transforming low-level pixe...
This book presents the use of efficient Evolutionary Computation (EC) algorithms for solving diverse...
The aim of this work is to automatically design a program that is able to detect dyskinetic movement...
Abstract. In this paper, a novel genetically-inspired visual learning method is proposed. Given the ...
In this thesis a novel approach to image classification is presented. The thesis explores the use of...
This Master's Thesis is focused on the principles of neural networks, primarily convolutional neural...
This thesis deals with evolutionary design of image classifier with help of genetic programming, spe...
This paper describes an approach to the use of genetic programming for multi-class image recognition...
Image classification is an important and fundamental task in computer vision and machine learning. T...
© 2019 IEEE. Evolutionary deep learning (EDL) as a hot topic in recent years aims at using evolution...
This thesis deals with image filter design using coevolutionary algorithms. It contains a descriptio...
This thesis deals with employing coevolutionary principles to the image filter design. Evolutionary ...
Cartesian genetic programming (CGP) is a form of genetic programming where candidate programs are re...
In this thesis a novel approach to image classification is presented. The thesis explores the use of...
Image classification is a popular task in machine learning and computer vision, but it is very chall...
IEEE Feature extraction is essential for solving image classification by transforming low-level pixe...
This book presents the use of efficient Evolutionary Computation (EC) algorithms for solving diverse...
The aim of this work is to automatically design a program that is able to detect dyskinetic movement...
Abstract. In this paper, a novel genetically-inspired visual learning method is proposed. Given the ...
In this thesis a novel approach to image classification is presented. The thesis explores the use of...
This Master's Thesis is focused on the principles of neural networks, primarily convolutional neural...