This paper presents a new neural architecture suitable for digital signal processing application. The architecture, based on adaptable multidimensional activation functions, allows to collect information from the previous network layer in aggregate form. In other words the number of network connections (structural complexity) can be very low respect to the problem complexity. This fact, as experimentally demonstrated in the paper, improve the network generalization capabilities and speed up the convergence of the learning process. A specific learning algorithm is derived and experimental results, on channel equalization, demonstrate the effectiveness of the proposed architecture. 1
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...
In this paper, we study the properties of a new kind of real and complex domain artificial neural ne...
This paper presents a new general neural structure based on nonlinear flexible multivariate function...
This paper presents a new neural architecture suitable for digital signal processing application. Th...
Presents a new neural architecture that is suitable for digital signal processing applications. The ...
This work concerns a new kind of neural structure that involves a multidimensional adaptive activati...
In this paper, a new complex-valued neural network based on adaptive activation functions is propose...
We study a complex-domain artificial neural networks, called the adaptive spline neural network, def...
Adaptive equalization of channels with non-linear intersymbol interference is considered. It is show...
In this paper, we study the complex-domain arttficial neural networks called adaptive spline neural ...
When digital signals are transmitted through frequency selective communication channels, one of the ...
In this paper a new approach to the equalization of digital transmission channels is introduced and ...
In this paper a novel approach to learning in Recurrent Neural Networks (RNN) is introduced and appl...
In this paper a new approach to the equalization of digital transmission channels is introduced and ...
Abstract This paper applies neural networks to the adaptive channel equalization of a bipolar signal...
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...
In this paper, we study the properties of a new kind of real and complex domain artificial neural ne...
This paper presents a new general neural structure based on nonlinear flexible multivariate function...
This paper presents a new neural architecture suitable for digital signal processing application. Th...
Presents a new neural architecture that is suitable for digital signal processing applications. The ...
This work concerns a new kind of neural structure that involves a multidimensional adaptive activati...
In this paper, a new complex-valued neural network based on adaptive activation functions is propose...
We study a complex-domain artificial neural networks, called the adaptive spline neural network, def...
Adaptive equalization of channels with non-linear intersymbol interference is considered. It is show...
In this paper, we study the complex-domain arttficial neural networks called adaptive spline neural ...
When digital signals are transmitted through frequency selective communication channels, one of the ...
In this paper a new approach to the equalization of digital transmission channels is introduced and ...
In this paper a novel approach to learning in Recurrent Neural Networks (RNN) is introduced and appl...
In this paper a new approach to the equalization of digital transmission channels is introduced and ...
Abstract This paper applies neural networks to the adaptive channel equalization of a bipolar signal...
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...
In this paper, we study the properties of a new kind of real and complex domain artificial neural ne...
This paper presents a new general neural structure based on nonlinear flexible multivariate function...