Kernel-based classifiers are neural networks (radial basis functions) where the probability densities of each class of data are first estimated, to be used thereafter to approximate Bayes boundaries between classes. Such an algorithm however involves a large number of operations, and its parallelism makes it an ideal candidate for a dedicated VLSI implementation. The authors present in this paper the architecture for a dedicated processor for kernel-based classifiers, and the implementation of the original cells.Peer Reviewe
It is shown that a kernel-based perceptron can be efficiently implemented in digital hardware using ...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...
Kernel-based classifiers are neural networks (radial basis functions) where the probability densitie...
Many neural-like algorithms currently under study support classification tasks. Several of these alg...
This paper presents a digital VLSI implementation of a feedforward neural network classifier based o...
This paper presents a digital VLSI implementation of a feed-forward neural network classifier based ...
This paper describes how to implement a partially connected neural network by Giga-Ops Spectrum G800...
Various types of neural networks ma! be used in multi-dimensional classification tasks; among them, ...
In this paper we present design and analysis of scalable hardware architectures for training learnin...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
This paper presents the work regarding the implementation of neural network using radial basis funct...
This paper describes the implementation of a partially connected neural network using FPGAs (Field P...
A special-purpose chip, optimized for computational needs of neural networks and performing over 200...
This paper describes a hardware implementation of threshold network ensembles (TNE) for classificati...
It is shown that a kernel-based perceptron can be efficiently implemented in digital hardware using ...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...
Kernel-based classifiers are neural networks (radial basis functions) where the probability densitie...
Many neural-like algorithms currently under study support classification tasks. Several of these alg...
This paper presents a digital VLSI implementation of a feedforward neural network classifier based o...
This paper presents a digital VLSI implementation of a feed-forward neural network classifier based ...
This paper describes how to implement a partially connected neural network by Giga-Ops Spectrum G800...
Various types of neural networks ma! be used in multi-dimensional classification tasks; among them, ...
In this paper we present design and analysis of scalable hardware architectures for training learnin...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
This paper presents the work regarding the implementation of neural network using radial basis funct...
This paper describes the implementation of a partially connected neural network using FPGAs (Field P...
A special-purpose chip, optimized for computational needs of neural networks and performing over 200...
This paper describes a hardware implementation of threshold network ensembles (TNE) for classificati...
It is shown that a kernel-based perceptron can be efficiently implemented in digital hardware using ...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...
Recent developments in microelectronic technology has diverted the interest of researchers towards h...