Authors
Peter Hansen, Peter Corke, Wageeh Boles, Kostas Daniilidis
Publication date
2007/10/29
Conference
2007 IEEE/RSJ International Conference on Intelligent Robots and Systems
Pages
1689-1694
Publisher
IEEE
Description
Numerous scale-invariant feature matching algorithms using scale-space analysis have been proposed for use with perspective cameras, where scale-space is defined as convolution with a Gaussian. The contribution of this work is a method suitable for use with wide angle cameras. Given an input image, we map it to the unit sphere and obtain scale-space images by convolution with the solution of the spherical diffusion equation on the sphere which we implement in the spherical Fourier domain. Using such an approach, the scale-space response of a point in space is independent of its position on the image plane for a camera subject to pure rotation. Scale-invariant features are then found as local extrema in scale-space. Given this set of scale-invariant features, we then generate feature descriptors by considering a circular support region defined on the sphere whose size is selected relative to the feature scale …
Total citations
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Scholar articles
P Hansen, P Corke, W Boles, K Daniilidis - 2007 IEEE/RSJ International Conference on Intelligent …, 2007