Sequential nonlinear manifold learning


Autoria(s): Kumar, S.; Guivant, J.; Upcroft, B.; Durrant-Whyte, H. F.
Data(s)

2007

Resumo

The computation of compact and meaningful representations of high dimensional sensor data has recently been addressed through the development of Nonlinear Dimensional Reduction (NLDR) algorithms. The numerical implementation of spectral NLDR techniques typically leads to a symmetric eigenvalue problem that is solved by traditional batch eigensolution algorithms. The application of such algorithms in real-time systems necessitates the development of sequential algorithms that perform feature extraction online. This paper presents an efficient online NLDR scheme, Sequential-Isomap, based on incremental singular value decomposition (SVD) and the Isomap method. Example simulations demonstrate the validity and significant potential of this technique in real-time applications such as autonomous systems.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/40421/

Publicador

IOS Press

Relação

http://eprints.qut.edu.au/40421/1/40421.pdf

http://www.iospress.nl/html/1088467x_ita.html

Kumar, S., Guivant, J., Upcroft, B., & Durrant-Whyte, H. F. (2007) Sequential nonlinear manifold learning. Intelligent Data Analysis, 11(2), pp. 203-222.

Direitos

Copyright 2007 IOS Press

Fonte

Faculty of Built Environment and Engineering; School of Engineering Systems

Palavras-Chave #090600 ELECTRICAL AND ELECTRONIC ENGINEERING #feature representation #autonomous vehicles #machine Learning Methods
Tipo

Journal Article