Title :
Dirichlet process mixture models for autonomous habitat classification
Author :
Steinberg, Daniel M. ; Pizarro, Oscar ; Williams, Stefan B. ; Jakuba, Michael V.
Author_Institution :
Australian Centre for Field Robot. (ACFR), Univ. of Sydney, Sydney, NSW, Australia
Abstract :
There is a need for truly unsupervised approaches to understanding acquired data in autonomous exploratory missions with minimal, or zero, bandwidth communication. This paper presents results of using a Bayesian non-parametric Dirichlet Process mixture model - the Infinite Gaussian Mixture Model (IGMM) - for the classification of benthic habitats. The IGMM is trained completely autonomously, without being given labelled data, or knowing the number of habitats present. It is able to infer the number of habitats present in the training data, and is also able to infer the presence of habitats in the test data that were not present in the training data. This is a powerful model for entirely autonomous labelling of benthic datasets, and will be used as the basis of completely autonomous approaches to understanding data in the future.
Keywords :
Bayes methods; oceanographic techniques; remotely operated vehicles; seafloor phenomena; underwater vehicles; Bayesian nonparametric model; Dirichlet process mixture model; Infinite Gaussian Mixture Model; autonomous exploratory mission; autonomous habitat classification; benthic habitat classification; Adaptation model; Biological system modeling; Data models; Histograms; Substrates; Training; Training data;
Conference_Titel :
OCEANS 2010 IEEE - Sydney
Conference_Location :
Sydney, NSW
Print_ISBN :
978-1-4244-5221-7
Electronic_ISBN :
978-1-4244-5222-4
DOI :
10.1109/OCEANSSYD.2010.5603617