SenseCam image localisation using hierarchical SURF trees

TitleSenseCam image localisation using hierarchical SURF trees
Publication TypeConference Paper
Year of Publication2009
AuthorsO'Conaire, CiarĂ¡n, Blighe Michael, and O'Connor Noel E.
Conference NameMMM 2009 - 15th International Multimedia Modeling Conference
Conference Date7-9 January 2009
PublisherSpringer Berlin / Heidelberg
Conference LocationSophia-Antipolis, France
ISBN Number978-3-540-92891-1
KeywordsRP4
Abstract

The SenseCam is a wearable camera that automatically takes photos of the wearer's activities, generating thousands of images per day. Automatically organising these images for efficient search and retrieval is a challenging task, but can be simplified by providing semantic information with each photo, such as the wearer's location during capture time. We propose a method for automatically determining the wearer's location using an annotated image database, described using SURF interest point descriptors. We show that SURF out-performs SIFT in matching SenseCam images and that matching can be done efficiently using hierarchical trees of SURF descriptors. Additionally, by re-ranking the top images using bi-directional SURF matches, location matching performance is improved further.

URLhttp://doras.dcu.ie/2248/