Both genetic programming and neural networks are machine learning techniques that have had a wide range of success in the world of computer vision. Recently, neural networks have been able to achieve excellent results on problems that even just ten years ago would have been considered intractable, especially in the area of image classification. Additionally, genetic programming has been shown capable of evolving computer vision programs that are capable of classifying objects in images using conventional computer vision operators. While genetic algorithms have been used to evolve neural network structures and tune the hyperparameters of said networks, this thesis explores an alternative combination of these two techniques. The author asks i...
: We apply Genetic Programming (GP) to the development of a processing tree for the classification o...
Published ArticlePeople have tried different ways to make machines intelligent. One option is to use...
This work deals with methods for finding optimal neural network architectures to learn par-ticular p...
Evolutionary computation has been around ever since the late 50s. This thesis aims at elaborate on g...
A deep convolutional neural network (CNN) trained on millions of images forms a very high-level abst...
This paper reports on the evolution of GP teams in different classiffication and regression problems...
A Lindenmayer system is a parallel rewriting system that generates graphic shapes using several rule...
NeuroEvolution is the application of Evolutionary Algorithms to the training of Artificial Neural Ne...
This paper presents a comparative analysis of linear genetic programming and artificial neural netwo...
This thesis deals with evolutionary design of image classifier with help of genetic programming, spe...
This Master's Thesis is focused on the principles of neural networks, primarily convolutional neural...
Image classification is an important and fundamental task in computer vision and machine learning. T...
This thesis focuses on developing an evolutionary art system using genetic programming. The main goa...
In this paper, we apply genetic algorithms to the automatic generation of neural networks as well as...
This paper proposes a framework for design space exploration ofConvolutional Neural Networks (CNNs) ...
: We apply Genetic Programming (GP) to the development of a processing tree for the classification o...
Published ArticlePeople have tried different ways to make machines intelligent. One option is to use...
This work deals with methods for finding optimal neural network architectures to learn par-ticular p...
Evolutionary computation has been around ever since the late 50s. This thesis aims at elaborate on g...
A deep convolutional neural network (CNN) trained on millions of images forms a very high-level abst...
This paper reports on the evolution of GP teams in different classiffication and regression problems...
A Lindenmayer system is a parallel rewriting system that generates graphic shapes using several rule...
NeuroEvolution is the application of Evolutionary Algorithms to the training of Artificial Neural Ne...
This paper presents a comparative analysis of linear genetic programming and artificial neural netwo...
This thesis deals with evolutionary design of image classifier with help of genetic programming, spe...
This Master's Thesis is focused on the principles of neural networks, primarily convolutional neural...
Image classification is an important and fundamental task in computer vision and machine learning. T...
This thesis focuses on developing an evolutionary art system using genetic programming. The main goa...
In this paper, we apply genetic algorithms to the automatic generation of neural networks as well as...
This paper proposes a framework for design space exploration ofConvolutional Neural Networks (CNNs) ...
: We apply Genetic Programming (GP) to the development of a processing tree for the classification o...
Published ArticlePeople have tried different ways to make machines intelligent. One option is to use...
This work deals with methods for finding optimal neural network architectures to learn par-ticular p...