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A Spiking Neural Network Framework for Robust Sound Classification
by
Tan, Kay Chen
, Wu, Jibin
, Chua, Yansong
, Zhang, Malu
, Li, Haizhou
in
Acoustics
/ Artificial intelligence
/ automatic sound classification
/ Classification
/ Computer applications
/ Decision making
/ Deep learning
/ Firing pattern
/ Machine learning
/ maximum-margin Tempotron classifier
/ Neural networks
/ Neuroscience
/ Noise
/ noise robust multi-condition training
/ self-organizing map
/ Sound
/ Speech
/ spiking neural network
/ Voice recognition
2018
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A Spiking Neural Network Framework for Robust Sound Classification
by
Tan, Kay Chen
, Wu, Jibin
, Chua, Yansong
, Zhang, Malu
, Li, Haizhou
in
Acoustics
/ Artificial intelligence
/ automatic sound classification
/ Classification
/ Computer applications
/ Decision making
/ Deep learning
/ Firing pattern
/ Machine learning
/ maximum-margin Tempotron classifier
/ Neural networks
/ Neuroscience
/ Noise
/ noise robust multi-condition training
/ self-organizing map
/ Sound
/ Speech
/ spiking neural network
/ Voice recognition
2018
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Do you wish to request the book?
A Spiking Neural Network Framework for Robust Sound Classification
by
Tan, Kay Chen
, Wu, Jibin
, Chua, Yansong
, Zhang, Malu
, Li, Haizhou
in
Acoustics
/ Artificial intelligence
/ automatic sound classification
/ Classification
/ Computer applications
/ Decision making
/ Deep learning
/ Firing pattern
/ Machine learning
/ maximum-margin Tempotron classifier
/ Neural networks
/ Neuroscience
/ Noise
/ noise robust multi-condition training
/ self-organizing map
/ Sound
/ Speech
/ spiking neural network
/ Voice recognition
2018
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A Spiking Neural Network Framework for Robust Sound Classification
Journal Article
A Spiking Neural Network Framework for Robust Sound Classification
2018
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Overview
Environmental sounds form part of our daily life. With the advancement of deep learning models and the abundance of training data, the performance of automatic sound classification (ASC) systems has improved significantly in recent years. However, the high computational cost, hence high power consumption, remains a major hurdle for large-scale implementation of ASC systems on mobile and wearable devices. Motivated by the observations that humans are highly effective and consume little power whilst analyzing complex audio scenes, we propose a biologically plausible ASC framework, namely SOM-SNN. This framework uses the unsupervised self-organizing map (SOM) for representing frequency contents embedded within the acoustic signals, followed by an event-based spiking neural network (SNN) for spatiotemporal spiking pattern classification. We report experimental results on the RWCP environmental sound and TIDIGITS spoken digits datasets, which demonstrate competitive classification accuracies over other deep learning and SNN-based models. The SOM-SNN framework is also shown to be highly robust to corrupting noise after multi-condition training, whereby the model is trained with noise-corrupted sound samples. Moreover, we discover the early decision making capability of the proposed framework: an accurate classification can be made with an only partial presentation of the input.
Publisher
Frontiers Research Foundation,Frontiers Media S.A
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