DocumentCode :
1798338
Title :
PROPRE: PROjection and PREdiction for multimodal correlations learning. An application to pedestrians visual data discrimination
Author :
Lefort, M. ; Gepperth, Alexander
Author_Institution :
UIIS Div., ENSTA ParisTech, Palaiseau, France
fYear :
2014
fDate :
6-11 July 2014
Firstpage :
2718
Lastpage :
2725
Abstract :
PROPRE is a generic and modular unsupervised neural learning paradigm that extracts meaningful concepts of multimodal data flows based on predictability across modalities. It consists on the combination of three modules. First, a topological projection of each data flow on a self-organizing map. Second, a decentralized prediction of each projection activity from each others map activities. Third, a predictability measure that compares predicted and real activities. This measure is used to modulate the projection learning so that to favor the mapping of predictable stimuli across modalities. In this article, we use Kohonen map for the projection module, linear regression for the prediction one and we propose multiple generic predictability measures. We illustrate the properties and performances of PROPRE paradigm on a challenging supervised classification task of visual pedestrian data. The modulation of the projection learning by the predictability measure improves significantly classification performances of the system independently of the measure used. Moreover, PROPRE provides a combination of interesting functional properties, such as a dynamical adaptation to input statistic variations, that is rarely available in other machine learning algorithms.
Keywords :
computer vision; image classification; pedestrians; regression analysis; self-organising feature maps; sensor fusion; topology; unsupervised learning; Kohonen map; PROPRE; decentralized prediction; generic modular unsupervised neural learning paradigm; input statistic variations; linear regression; machine learning algorithms; multimodal correlations learning; multimodal data flow; multiple data flow fusion; multiple generic predictability measures; pedestrian visual data discrimination; projection activity; projection learning; projection module; self-organizing map; supervised classification task; topological projection; visual pedestrian data; Computer architecture; Current measurement; Equations; Mathematical model; Modulation; Robot sensing systems; Visualization;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6627-1
Type :
conf
DOI :
10.1109/IJCNN.2014.6889904
Filename :
6889904
Link To Document :
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