Title :
Long-term learning behavior in a recurrent neural network for sound recognition
Author :
Boes, Michiel ; Oldoni, Damiano ; De Coensel, Bert ; Botteldooren, Dick
Author_Institution :
Dept. of Inf. Technol., Ghent Univ., Ghent, Belgium
Abstract :
In this paper, the long-term learning properties of an artificial neural network model, designed for sound recognition and computational auditory scene analysis in general, are investigated. The model is designed to run for long periods of time (weeks to months) on low-cost hardware, used in a noise monitoring network, and builds upon previous work by the same authors. It consists of three neural layers, connected to each other by feedforward and feedback excitatory connections. It is shown that the different mechanisms that drive auditory attention emerge naturally from the way in which neural activation and intra-layer inhibitory connections are implemented in the model. Training of the artificial neural network is done following the Hebb principle, dictating that "Cells that fire together, wire together", with some important modifications, compared to standard Hebbian learning. As the model is designed to be on-line for extended periods of time, also learning mechanisms need to be adapted to this. The learning needs to be strongly attention- and saliency-driven, in order not to waste available memory space for sounds that are of no interest to the human listener. The model also implements plasticity, in order to deal with new or changing input over time, without catastrophically forgetting what it already learned. On top of that, it is shown that also the implementation of short-term memory plays an important role in the long-term learning properties of the model. The above properties are investigated and demonstrated by training on real urban sound recordings.
Keywords :
Hebbian learning; acoustic noise; audio recording; audio signal processing; audio streaming; recurrent neural nets; Hebb principle; artificial neural network; computational auditory scene analysis; feedback excitatory connection; feedforward excitatory connection; intralayer inhibitory connection; learning behavior; neural activation; neural layer; noise monitoring network; recurrent neural network; sound recognition; training; urban sound recordings; Adaptation models; Biological system modeling; Brain modeling; Computational modeling; Correlation; Hebbian theory; Neurons;
Conference_Titel :
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6627-1
DOI :
10.1109/IJCNN.2014.6889658