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Estimation of Location Uncertainty for Scale Invariant Feature Points

14 years 7 months ago
Estimation of Location Uncertainty for Scale Invariant Feature Points
Image feature points are the basis for numerous computer vision tasks, such as pose estimation or object detection. State of the art algorithms detect features that are invariant to scale and orientation changes. While feature detectors and descriptors have been widely studied in terms of stability and repeatability, their localisation error has often been assumed to be uniform and insignificant. We argue that this assumption does not hold for scale-invariant feature detectors and demonstrate that the detection of features at different image scales actually has an influence on the localisation accuracy. A general framework to determine the uncertainty of multi-scale image features is introduced. This uncertainty is represented via anisotropic covariances with varying orientation and magnitude. We apply our framework to the well-known SIFT and SURF algorithms, detail its implementation and make it available. Finally the usefulness of such covariance estimates for bundle adjustment and h...
Bernhard Zeisl, Pierre Fite Georgel, Florian Schwe
AttachmentsSize
zeisl2009bmvc.slides.pdf1.12 MB
Added 21 Apr 2010
Updated 21 Apr 2010
Type Conference
Year 2009
Where BMVC
Authors Bernhard Zeisl, Pierre Fite Georgel, Florian Schweiger, Eckehard Steinbach, Nassir Navab
Attachments 1 file(s)
For a video illustrating the uncertainty estimation please go to http://ar.in.tum.de/Chair/PublicationDetail?pub=zeisl2009bmvc.
The oral presentation at BMVC 2009 can be found at http://videolectures.net/bmvc09_zeisl_elus/

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