In this paper we evaluate and compare the performance of self-organizing neural networks applied to the task of image compression. The networks investigated are two-layered architectures with linear neurons, and variants of Hebbian learning rules are used to reduce the dimensionality of the inputs while preserving a maximum of information in the output units. Although in theory all networks considered are effectively equivalent to performing the Karhunen-Loeve transform, which is the optimal image compression method in the sense that it allows linear reconstruction of the input information with minimal squared error, the results obtained in practice reveal significant differences between the networks. An experimental study has been conducte...
The problem considered is the effective compression of image data. Compared to the many methods whic...
The theory of Neural Networks (NNs) has witnessed a striking progress in the past fifteen years. The...
The article presents the application of the feedforward neural network with Hebba selforganization t...
In this paper we evaluate and compare the performance of self-organizing neural networks applied to ...
Abstract — This paper presents a tutorial overview of neural networks as signal processing tools for...
Abstract — Digital images require large amounts of memory for storage. Thus, the transmission of an ...
This document describes image compression using different types of neural networks. Features of neur...
Images are forming an increasingly large part of modern communications, bringing the need for effici...
In this paper a neural network based image compression method is presented. Neural networks offer th...
In this research work a technique is proposed for image compression which is based on Neural Network...
A new color image compression algorithm using Kohonen\u27s self-organizing feature map is proposed. ...
ln this work the implementation of the SOM (Self Organizing Maps) algorithm or Kohonen neural networ...
A novel architecture for image compression is proposed, which is based on a suitable combination of ...
This paper presents a compression scheme for digital still images, by using the Kohonen's neural net...
A self-organizing Hopfield network has been developed in the context of Vector Ouantiza--tion, aimin...
The problem considered is the effective compression of image data. Compared to the many methods whic...
The theory of Neural Networks (NNs) has witnessed a striking progress in the past fifteen years. The...
The article presents the application of the feedforward neural network with Hebba selforganization t...
In this paper we evaluate and compare the performance of self-organizing neural networks applied to ...
Abstract — This paper presents a tutorial overview of neural networks as signal processing tools for...
Abstract — Digital images require large amounts of memory for storage. Thus, the transmission of an ...
This document describes image compression using different types of neural networks. Features of neur...
Images are forming an increasingly large part of modern communications, bringing the need for effici...
In this paper a neural network based image compression method is presented. Neural networks offer th...
In this research work a technique is proposed for image compression which is based on Neural Network...
A new color image compression algorithm using Kohonen\u27s self-organizing feature map is proposed. ...
ln this work the implementation of the SOM (Self Organizing Maps) algorithm or Kohonen neural networ...
A novel architecture for image compression is proposed, which is based on a suitable combination of ...
This paper presents a compression scheme for digital still images, by using the Kohonen's neural net...
A self-organizing Hopfield network has been developed in the context of Vector Ouantiza--tion, aimin...
The problem considered is the effective compression of image data. Compared to the many methods whic...
The theory of Neural Networks (NNs) has witnessed a striking progress in the past fifteen years. The...
The article presents the application of the feedforward neural network with Hebba selforganization t...