This paper presents a digital VLSI implementation of a feedforward neural network classifier based on the saturating linear activation function. The architecture consists of one-hidden layer performing the weighted sum followed by a saturating linear activation function. The hardware implementation of such a network presents a significant advantage in terms of circuit complexity as compared to a network based on a sigmoid activation function, but without compromising the classification performance. Simulation results on two benchmark problems show that feedforward neural networks with the saturating linearity perform as well as networks with the sigmoid activation function. The architecture can also handle variable precision resulting in a ...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
The last decade has witnessed the revival and a new surge in the field of artificial neural network ...
Abstract:There is various new & advance technologies in medical science we are trying to process...
This paper presents a digital VLSI implementation of a feed-forward neural network classifier based ...
Kernel-based classifiers are neural networks (radial basis functions) where the probability densitie...
For the last two decades, lot of research has been done on neural networks, resulting in many types ...
A special purpose neural IC is described which will be utilised in a data-acquisition system in DESY...
This paper aims to place neural networks in the context of boolean circuit complexity. We define app...
<div>With the advent of new technologies and advancement in medical science we are trying to process...
With the advent of new technologies and advancement in medical science we are trying to process the ...
This paper describes how to implement a partially connected neural network by Giga-Ops Spectrum G800...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
The last decade has witnessed the revival and a new surge in the field of artificial neural network ...
Abstract:There is various new & advance technologies in medical science we are trying to process...
This paper presents a digital VLSI implementation of a feed-forward neural network classifier based ...
Kernel-based classifiers are neural networks (radial basis functions) where the probability densitie...
For the last two decades, lot of research has been done on neural networks, resulting in many types ...
A special purpose neural IC is described which will be utilised in a data-acquisition system in DESY...
This paper aims to place neural networks in the context of boolean circuit complexity. We define app...
<div>With the advent of new technologies and advancement in medical science we are trying to process...
With the advent of new technologies and advancement in medical science we are trying to process the ...
This paper describes how to implement a partially connected neural network by Giga-Ops Spectrum G800...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
This paper presents a theoretical analysis and some experimental results concerning the effects of b...
The last decade has witnessed the revival and a new surge in the field of artificial neural network ...
Abstract:There is various new & advance technologies in medical science we are trying to process...