A large number of experiments have been done on the basic research of parameter estimation from images with neural networks. To obtain a better estimation accuracy of parameters and to decrease needed storage space and computation time, the architecture of networks, the effective learning rate and momentum, and the selection of training set are investigated. A comparison of network performance to that of the least squares estimator is made. The internal representations in trained networks, i.e. input-to-hidden weight maps or measuring models, which include statistical features of training images and have a clear physical and geometrical meaning, and the internal components of output parameters given by outputs of hidden neurons are presente
This paper presents a study for the effect of learning rate on an approach for texture classificatio...
The back propagation training algorithm, used to train non-linear feed forward multi-layer artificia...
Despite their success-story, artificial neural networks have one major disadvantage compared to othe...
The internal representations of 'learned' knowledge in neural networks are still poorly understood, ...
The internal representations of 'learned' knowledge in neural networks are still poorly understood, ...
Abstract Recently back propagation neural network BPNN has been applied successfully in many areas w...
© 2015 Dr. Sergey DemyanovNeural networks have become very popular in the last few years. They have ...
This thesis investigates areas of neural networks and their application to aspects of image processi...
Backpropagation algorithm is the most commonly used algorithm for training artificial neural network...
Neural networks (NN) are computational models with the capacity to learn, generalize and the most us...
A Neural Network is a powerful data modeling tool that is able to capture and represent complex inpu...
Abstract — We have recently proposed a novel neural network structure called an “Affordable Neural N...
We derive global H 1 optimal training algorithms for neural networks. These algorithms guarantee t...
Artificial neural networks have, in recent years, been very successfully applied in a wide range of ...
Abstract- Artificial neural networks (ANNs) are used for content based image retrieval (CBIR). Train...
This paper presents a study for the effect of learning rate on an approach for texture classificatio...
The back propagation training algorithm, used to train non-linear feed forward multi-layer artificia...
Despite their success-story, artificial neural networks have one major disadvantage compared to othe...
The internal representations of 'learned' knowledge in neural networks are still poorly understood, ...
The internal representations of 'learned' knowledge in neural networks are still poorly understood, ...
Abstract Recently back propagation neural network BPNN has been applied successfully in many areas w...
© 2015 Dr. Sergey DemyanovNeural networks have become very popular in the last few years. They have ...
This thesis investigates areas of neural networks and their application to aspects of image processi...
Backpropagation algorithm is the most commonly used algorithm for training artificial neural network...
Neural networks (NN) are computational models with the capacity to learn, generalize and the most us...
A Neural Network is a powerful data modeling tool that is able to capture and represent complex inpu...
Abstract — We have recently proposed a novel neural network structure called an “Affordable Neural N...
We derive global H 1 optimal training algorithms for neural networks. These algorithms guarantee t...
Artificial neural networks have, in recent years, been very successfully applied in a wide range of ...
Abstract- Artificial neural networks (ANNs) are used for content based image retrieval (CBIR). Train...
This paper presents a study for the effect of learning rate on an approach for texture classificatio...
The back propagation training algorithm, used to train non-linear feed forward multi-layer artificia...
Despite their success-story, artificial neural networks have one major disadvantage compared to othe...