Abstract. The process of representing a large data set with a smaller number of vectors in the best possible way, also known as vector quantization, has been intensively studied in the recent years. Very efficient algorithms like the Kohonen Self Organizing Map (SOM) and the Linde Buzo Gray (LBG) algorithm have been devised. In this paper a physical approach to the problem is taken, and it is shown that by considering the processing elements as points moving in a potential field an algorithm equally efficient as the before mentioned can be derived. Unlike SOM and LBG this algorithm has a clear physical interpretation and relies on minimization of a well defined cost-function. It is also shown how the potential field approach can be linked t...
In this paper, a two-stage algorithm for vector quantization is proposed based on a self-organizing ...
In this paper the basic principles and developments of an unsupervised learning algorithm, the Self-...
The goal of vector quantization is to use a few reproduction vectors to represent original vectors/d...
Abstract:- We are interested in the vector quantization problem. Many researches focus on finding a ...
We present an introductory survey to optimal vector quantization and its first application...
We present an introductory survey to optimal vector quantization and its first application...
: A new method of a vector quantization in multidimensional space is presented. The method combines ...
Based on the notion of Mutual Information between the components of a random vector, we construct, f...
Abstract. In a previous paper ([1], ESANN’97), we compared the Kohonen algorithm (SOM) to Simple Com...
Self-organizing maps (SOM) are widely used for their topology preservation property: neighboring inp...
We consider the problem of finding points of interest along local curves of binary images. Informati...
In this paper, LBGS, a new parallel/distributed technique for Vector Quantization is presented. It d...
Kohonen's Self Organizing Feature Map (SOFM) produces an ordered mapping from one space to another. ...
In quantisation of any source with a nonuniform probability density function, the entropy coding of ...
A new vector quantization method -- denoted LBG-U -- is presented which is closely related to a part...
In this paper, a two-stage algorithm for vector quantization is proposed based on a self-organizing ...
In this paper the basic principles and developments of an unsupervised learning algorithm, the Self-...
The goal of vector quantization is to use a few reproduction vectors to represent original vectors/d...
Abstract:- We are interested in the vector quantization problem. Many researches focus on finding a ...
We present an introductory survey to optimal vector quantization and its first application...
We present an introductory survey to optimal vector quantization and its first application...
: A new method of a vector quantization in multidimensional space is presented. The method combines ...
Based on the notion of Mutual Information between the components of a random vector, we construct, f...
Abstract. In a previous paper ([1], ESANN’97), we compared the Kohonen algorithm (SOM) to Simple Com...
Self-organizing maps (SOM) are widely used for their topology preservation property: neighboring inp...
We consider the problem of finding points of interest along local curves of binary images. Informati...
In this paper, LBGS, a new parallel/distributed technique for Vector Quantization is presented. It d...
Kohonen's Self Organizing Feature Map (SOFM) produces an ordered mapping from one space to another. ...
In quantisation of any source with a nonuniform probability density function, the entropy coding of ...
A new vector quantization method -- denoted LBG-U -- is presented which is closely related to a part...
In this paper, a two-stage algorithm for vector quantization is proposed based on a self-organizing ...
In this paper the basic principles and developments of an unsupervised learning algorithm, the Self-...
The goal of vector quantization is to use a few reproduction vectors to represent original vectors/d...