• Documents
  • Authors
  • Tables
  • Log in
  • Sign up
  • MetaCart
  • DMCA
  • Donate

CiteSeerX logo

DMCA

An affine invariant interest point detector (2002)

Cached

  • Download as a PDF

Download Links

  • [perception.inrialpes.fr]
  • [cs.gmu.edu]
  • [nichol.as]
  • [www.inrialpes.fr]
  • [perception.inrialpes.fr]
  • [www.cs.unr.edu]
  • [www.cse.unr.edu]
  • [www.cse.unr.edu]
  • [hal.inria.fr]
  • [imagine.enpc.fr]
  • [lear.inrialpes.fr]
  • [vasc.ri.cmu.edu]
  • [xm2vtsdb.ee.surrey.ac.uk]

  • Other Repositories/Bibliography

  • DBLP
  • Save to List
  • Add to Collection
  • Correct Errors
  • Monitor Changes
by Krystian Mikolajczyk , Cordelia Schmid
Venue:In Proceedings of the 7th European Conference on Computer Vision
Citations:1466 - 55 self
  • Summary
  • Citations
  • Active Bibliography
  • Co-citation
  • Clustered Documents
  • Version History

BibTeX

@INPROCEEDINGS{Mikolajczyk02anaffine,
    author = {Krystian Mikolajczyk and Cordelia Schmid},
    title = {An affine invariant interest point detector},
    booktitle = {In Proceedings of the 7th European Conference on Computer Vision},
    year = {2002},
    pages = {0--7}
}

Share

Facebook Twitter Reddit Bibsonomy

OpenURL

 

Abstract

Abstract. This paper presents a novel approach for detecting affine invariant interest points. Our method can deal with significant affine transformations including large scale changes. Such transformations introduce significant changes in the point location as well as in the scale and the shape of the neighbourhood of an interest point. Our approach allows to solve for these problems simultaneously. It is based on three key ideas: 1) The second moment matrix computed in a point can be used to normalize a region in an affine invariant way (skew and stretch). 2) The scale of the local structure is indicated by local extrema of normalized derivatives over scale. 3) An affine-adapted Harris detector determines the location of interest points. A multi-scale version of this detector is used for initialization. An iterative algorithm then modifies location, scale and neighbourhood of each point and converges to affine invariant points. For matching and recognition, the image is characterized by a set of affine invariant points; the affine transformation associated with each point allows the computation of an affine invariant descriptor which is also invariant to affine illumination changes. A quantitative comparison of our detector with existing ones shows a significant improvement in the presence of large affine deformations. Experimental results for wide baseline matching show an excellent performance in the presence of large perspective transformations including significant scale changes. Results for recognition are very good for a database with more than 5000 images.

Keyphrases

affine invariant interest point detector    interest point    affine invariant interest point    point location    large perspective transformation    novel approach    affine transformation    invariant point    normalized derivative    significant improvement    large affine deformation    affine invariant way    wide baseline    affine invariant point    significant affine transformation    local structure    significant change    local extremum    affine invariant descriptor    illumination change    multi-scale version    key idea    iterative algorithm    second moment matrix    affine-adapted harris detector    quantitative comparison    large scale change    experimental result    excellent performance    significant scale change   

Powered by: Apache Solr
  • About CiteSeerX
  • Submit and Index Documents
  • Privacy Policy
  • Help
  • Data
  • Source
  • Contact Us

Developed at and hosted by The College of Information Sciences and Technology

© 2007-2019 The Pennsylvania State University