In this paper, artificial neural networks are considered as an emergent alternative to the classical 'model-based approach' to the design of signal-processing algorithms. After briefly examining the pros and cons of the neural-network approach, we propose the application of structured neural networks (SNNs) for the classification of signals characterized by different 'information sources', such as multisensor signals or signals described by features computed in different domains. The main purpose of such neural networks is to overcome the drawbacks of classical neural classifiers due to the lack of general criteria for 'architecture definition' and to the difficulty with interpreting the 'network behaviour'. Our structured neural networks are based on multilayer perceptrons with hierarchical sparse architectures that take into account explicitly the 'multisource' characteristics of input signals and make it possible to understand and validate the operation of the implemented classifica...
Structured neural networks for signal classification
Bruzzone, Lorenzo;
1998-01-01
Abstract
In this paper, artificial neural networks are considered as an emergent alternative to the classical 'model-based approach' to the design of signal-processing algorithms. After briefly examining the pros and cons of the neural-network approach, we propose the application of structured neural networks (SNNs) for the classification of signals characterized by different 'information sources', such as multisensor signals or signals described by features computed in different domains. The main purpose of such neural networks is to overcome the drawbacks of classical neural classifiers due to the lack of general criteria for 'architecture definition' and to the difficulty with interpreting the 'network behaviour'. Our structured neural networks are based on multilayer perceptrons with hierarchical sparse architectures that take into account explicitly the 'multisource' characteristics of input signals and make it possible to understand and validate the operation of the implemented classifica...I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione



