Reservoir Computing Networks (RCNs) are a special type of single layer recurrent neural networks, in which the input and the recurrent connections are randomly generated and only the output weights are trained. Besides the ability to process temporal information, the key points of RCN are easy training and robustness against noise. Recently, we introduced a simple strategy to tune the parameters of RCNs. Evaluation in the domain of noise robust speech recognition proved that this method was effective. The aim of this work is to extend that study to the field of image processing, by showing that the proposed parameter tuning procedure is equally valid in the field of image processing and conforming that RCNs are apt at temporal modeling and ...
Convolutional neural networks are sensitive to unknown noisy condition in the test phase and so thei...
International audienceReservoir Computing is an attractive paradigm of recurrent neural network arch...
This paper presents an adaptive form of the Radial basis function neural network to correct the nois...
Among the various types of artificial neural networks used for event detection in visual contents, t...
In this paper a formerly proposed continuous digit recognition system based on Reservoir Computing (...
Recurrent neural networks are very powerful engines for processing information that is coded in time...
Most automatic speech recognition systems employ Hidden Markov Models with Gaussian mixture emission...
In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, ...
While procuring images form satellite the multispectral images (MSI) are often prone to noises. find...
In this paper, we show how new training principles and opti-mization techniques for neural networks ...
Notwithstanding the many years of research, more work is needed to create automatic speech recogniti...
With the great breakthrough of supervised learning in the field of denoising, more and more works fo...
We study and analyze the fundamental aspects of noise propagation in recurrent as well as deep, mult...
Echo State Networks and Liquid State Machines introduced a new paradigm in artificial recurrent neur...
Recurrent neural networks are successfully used for tasks like time series processing and system ide...
Convolutional neural networks are sensitive to unknown noisy condition in the test phase and so thei...
International audienceReservoir Computing is an attractive paradigm of recurrent neural network arch...
This paper presents an adaptive form of the Radial basis function neural network to correct the nois...
Among the various types of artificial neural networks used for event detection in visual contents, t...
In this paper a formerly proposed continuous digit recognition system based on Reservoir Computing (...
Recurrent neural networks are very powerful engines for processing information that is coded in time...
Most automatic speech recognition systems employ Hidden Markov Models with Gaussian mixture emission...
In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, ...
While procuring images form satellite the multispectral images (MSI) are often prone to noises. find...
In this paper, we show how new training principles and opti-mization techniques for neural networks ...
Notwithstanding the many years of research, more work is needed to create automatic speech recogniti...
With the great breakthrough of supervised learning in the field of denoising, more and more works fo...
We study and analyze the fundamental aspects of noise propagation in recurrent as well as deep, mult...
Echo State Networks and Liquid State Machines introduced a new paradigm in artificial recurrent neur...
Recurrent neural networks are successfully used for tasks like time series processing and system ide...
Convolutional neural networks are sensitive to unknown noisy condition in the test phase and so thei...
International audienceReservoir Computing is an attractive paradigm of recurrent neural network arch...
This paper presents an adaptive form of the Radial basis function neural network to correct the nois...