Vector Quantization importance has been increasing and it is becoming a vital element in the process of classification and clustering of different types of information to help in the development of machines learning and decisions making, however the different techniques that implements Vector Quantization have always come short in some aspects. A lot of researchers have turned their heads towards the idea of creating a Vector Quantization mechanism that is fast and can be used to classify data that is rapidly being generated from some source, most of the mechanisms depend on a specific style of neural networks, this research is one of those attempts. One of the dilemmas that this technology faces is the compromise that has to be made be...
Kohonen's Learning Vector Quantization (LVQ) is a neural network architecture that performs nonparam...
This paper shows a way to combine speech recognition techniques based on Vector Quantization (VQ) wi...
Paper ini menjelaskan bagaimana suatu kata yang diucapkan manusia dapat dikenali oleh sebuah sistem ...
The authors investigate the performance of two neural network architectures for vector quantization ...
This paper focuses on recent developments in the use of Artificial Neural Networks (ANNs) for Vector...
The current study presents the hard implementation of a learning Vector Quantization (LVQ) neural ne...
Abstract — Although the “neural-gas ” network proposed by Martinetz et al. in 1993 has been proven f...
In this thesis we study several properties of Learning Vector Quantization. LVQ is a nonparametric d...
The aim of this master thesis is modeling of neural network accelerators with HW support for quantiz...
A vector quantizer based on artificial neural networks is developed for use in digital video data co...
A large variety of machine learning models which aim at vector quantization have been proposed. Howe...
An artificial neural network vector quantizer is developed for use in data compression applications ...
International audienceThis paper focuses on the possibility of enabling vector quantization learning...
This research focuses on the development of a novel adaptive dynamical system approach to vector qua...
A vector quantization scheme with a two-stage neural network coding(NNVQ) is developed, where an enc...
Kohonen's Learning Vector Quantization (LVQ) is a neural network architecture that performs nonparam...
This paper shows a way to combine speech recognition techniques based on Vector Quantization (VQ) wi...
Paper ini menjelaskan bagaimana suatu kata yang diucapkan manusia dapat dikenali oleh sebuah sistem ...
The authors investigate the performance of two neural network architectures for vector quantization ...
This paper focuses on recent developments in the use of Artificial Neural Networks (ANNs) for Vector...
The current study presents the hard implementation of a learning Vector Quantization (LVQ) neural ne...
Abstract — Although the “neural-gas ” network proposed by Martinetz et al. in 1993 has been proven f...
In this thesis we study several properties of Learning Vector Quantization. LVQ is a nonparametric d...
The aim of this master thesis is modeling of neural network accelerators with HW support for quantiz...
A vector quantizer based on artificial neural networks is developed for use in digital video data co...
A large variety of machine learning models which aim at vector quantization have been proposed. Howe...
An artificial neural network vector quantizer is developed for use in data compression applications ...
International audienceThis paper focuses on the possibility of enabling vector quantization learning...
This research focuses on the development of a novel adaptive dynamical system approach to vector qua...
A vector quantization scheme with a two-stage neural network coding(NNVQ) is developed, where an enc...
Kohonen's Learning Vector Quantization (LVQ) is a neural network architecture that performs nonparam...
This paper shows a way to combine speech recognition techniques based on Vector Quantization (VQ) wi...
Paper ini menjelaskan bagaimana suatu kata yang diucapkan manusia dapat dikenali oleh sebuah sistem ...