DocumentCode :
1316005
Title :
Sparse deep-learning algorithm for recognition and categorisation
Author :
Charalampous, Konstantinos ; Kostavelis, Ioannis ; Amanatiadis, A. ; Gasteratos, A.
Author_Institution :
Dept. of Production & Manage. Eng., Democritus Univ. Of Thrace, Xanthi, Greece
Volume :
48
Issue :
20
fYear :
2012
Firstpage :
1265
Lastpage :
1266
Abstract :
Presented is a deep-learning method for pattern classification and object recognition. The proposed methodology is based on an optimised version of the hierarchical temporal memory (HTM) algorithm and it preserves its basic structure, along with a tree structure of connected nodes. The tree structured scheme is inspired by the human neocortex, which provides great capabilities for recognition and categorisation. The proposed method is enriched with more representative quantisation centres using an adaptive neural gas algorithm, and a more accurate and dense grouping by applying a graph clustering technique. Sparse representation using L1 norm minimisation is embedded as a liaison between the quantisation centres and their grouping, reinforcing the proposed technique with advantages, such as a natural discrimination capability. The proposed work is experimentally compared with the aforementioned techniques as well as with state-of-the-art algorithms, presenting a better classification performance.
Keywords :
graph theory; learning (artificial intelligence); minimisation; pattern classification; pattern clustering; trees (mathematics); L1 norm minimisation; adaptive neural gas algorithm; connected nodes tree structure; dense grouping; graph clustering technique; hierarchical temporal memory algorithm; human neocortex; object recognition; pattern classification; representative quantisation centres; sparse deep-learning algorithm; sparse representation;
fLanguage :
English
Journal_Title :
Electronics Letters
Publisher :
iet
ISSN :
0013-5194
Type :
jour
DOI :
10.1049/el.2012.1033
Filename :
6329560
Link To Document :
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