Neural network structure for spatio-temporal long-term memory : theory and applications

This thesis presents a novel spatio-temporal neural network that is inspired by the Long-Term Memory (LTM) structure of the human cortex. The proposed LTM neural network model processes real-valued multi-dimensional data sequences and is designed to addresses three critical problems in robust sequen...

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Main Author: Nguyen, Vu Anh.
Other Authors: Goh Wooi Boon
Format: Theses and Dissertations
Language:English
Published: 2013
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Online Access:http://hdl.handle.net/10356/52462
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-524622023-03-04T00:35:12Z Neural network structure for spatio-temporal long-term memory : theory and applications Nguyen, Vu Anh. Goh Wooi Boon School of Computer Engineering Centre for Multimedia and Network Technology DRNTU::Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence This thesis presents a novel spatio-temporal neural network that is inspired by the Long-Term Memory (LTM) structure of the human cortex. The proposed LTM neural network model processes real-valued multi-dimensional data sequences and is designed to addresses three critical problems in robust sequential learning, namely error tolerance, significance of sequence elements and memory forgetting. Extensive synthetic simulations were performed to study the statistical properties of the LTM model and its robustness to different types of distortions. A computational framework to align and combine multiple sequences stored by LTM cells is also proposed. This framework provides a compact representation for handling multiple training sequences belonging to the same class and enhances error tolerance by learning spatio-temporal structures or grammatical rules that may exist in these multiple sequences. The second part of this thesis applies the proposed LTM framework to three different pattern recognition problems, each of which deals with a different data modality. These applications include hand-sign language interpretation with the UCI Australian Sign Language (ASL) dataset, visual topological place localization for robotic navigation with the COsy Localization Dataset (COLD) and isolated phoneme recognition for speech processing with the NIST TIMIT dataset. Experimental results show that the proposed LTM model is able to produce comparable results with the current state-of-the-art methods for the each of the chosen datasets, both in terms of recognition performance and the efficiency in memory storage. More importantly, the results show that the proposed model is sufficiently general to different application domains that require sequential data analysis. This suggests that the biologically-inspired LTM model could be a potential candidate for use as a computational unit of episodic memory in the development of cognitive machines. Doctor of Philosophy (SCE) 2013-05-09T04:00:10Z 2013-05-09T04:00:10Z 2012 2012 Thesis http://hdl.handle.net/10356/52462 en 194 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence
spellingShingle DRNTU::Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence
Nguyen, Vu Anh.
Neural network structure for spatio-temporal long-term memory : theory and applications
description This thesis presents a novel spatio-temporal neural network that is inspired by the Long-Term Memory (LTM) structure of the human cortex. The proposed LTM neural network model processes real-valued multi-dimensional data sequences and is designed to addresses three critical problems in robust sequential learning, namely error tolerance, significance of sequence elements and memory forgetting. Extensive synthetic simulations were performed to study the statistical properties of the LTM model and its robustness to different types of distortions. A computational framework to align and combine multiple sequences stored by LTM cells is also proposed. This framework provides a compact representation for handling multiple training sequences belonging to the same class and enhances error tolerance by learning spatio-temporal structures or grammatical rules that may exist in these multiple sequences. The second part of this thesis applies the proposed LTM framework to three different pattern recognition problems, each of which deals with a different data modality. These applications include hand-sign language interpretation with the UCI Australian Sign Language (ASL) dataset, visual topological place localization for robotic navigation with the COsy Localization Dataset (COLD) and isolated phoneme recognition for speech processing with the NIST TIMIT dataset. Experimental results show that the proposed LTM model is able to produce comparable results with the current state-of-the-art methods for the each of the chosen datasets, both in terms of recognition performance and the efficiency in memory storage. More importantly, the results show that the proposed model is sufficiently general to different application domains that require sequential data analysis. This suggests that the biologically-inspired LTM model could be a potential candidate for use as a computational unit of episodic memory in the development of cognitive machines.
author2 Goh Wooi Boon
author_facet Goh Wooi Boon
Nguyen, Vu Anh.
format Theses and Dissertations
author Nguyen, Vu Anh.
author_sort Nguyen, Vu Anh.
title Neural network structure for spatio-temporal long-term memory : theory and applications
title_short Neural network structure for spatio-temporal long-term memory : theory and applications
title_full Neural network structure for spatio-temporal long-term memory : theory and applications
title_fullStr Neural network structure for spatio-temporal long-term memory : theory and applications
title_full_unstemmed Neural network structure for spatio-temporal long-term memory : theory and applications
title_sort neural network structure for spatio-temporal long-term memory : theory and applications
publishDate 2013
url http://hdl.handle.net/10356/52462
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