Fast and efficient local features detection for building recognition

Phuong Giang Nguyen, Hans Jørgen Andersen

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningpeer review

Abstract

The vast growth of image databases creates many challenges for
computer vision applications, for instance image retrieval and object recognition.
Large variation in imaging conditions such as illumination and geometrical
properties (including scale, rotation, and viewpoint) gives rise to the
need for invariant features; i.e. image features should have minimal differences
under these conditions. Local image features in the form of key points
are widely used because of their invariant properties. In this chapter, we analyze
different issues relating to existing local feature detectors. Based on this
analysis, we present a new approach for detecting and filtering local features.
The proposed approach is tested in a real-life application which supports
navigation in urban environments based on visual information. The study
shows that our approach performs as well as existing methods but with a
significantly lower number of features.
OriginalsprogEngelsk
BogserieStudies in Computational Intelligence
Vol/bind339
Sider (fra-til)87-104
Antal sider18
ISSN1860-949X
DOI
StatusUdgivet - 2011

Bibliografisk note

Udgivet i: Kwasnicka, H. & Jain, L. C. (Eds.): Innovations in Intelligent Image Analysis. ISBN (trykt): 978-3-642-17933-4, ISBN (elektronisk): 978-3-642-17934-1

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