Line segment extraction in panoramic images

Date issued

2002

Journal Title

Journal ISSN

Volume Title

Publisher

UNION Agency

Abstract

Omni-directional sensors are useful in obtaining a 360 degree field of view of a scene for telepresence, panoramic scene capture and machine vision. An approach to obtain a panoramic view is to utilize a radially-symmetric, non-planar mirror and a single image sensor. There are several proposed profiles for the mirror, but most violate the Single View-Point criteria necessary to allow functional equivalence to the standard perpective projection. This poses challenges for feature extraction that must be met to make use of such non-SVP mirror profiles (such as spherical) that have other desireable properties. Such a non-SVP optical system does not benefit from the affine quality of straight line features being represented as collinear points in the image plane. A new method to recognize the salient features of straight line segments with such optics is presented. Previous work addressing this need saw the developement of a modified Hough transform to facilitate the detection of horizontal and vertical line feature edges. Algorithms tailored to utilize this Panoramic Hough transform to robustly extract horizontal and vertical line segments are presented. Specifically a robust method for using this Panoramic Hough transform to sucessively identify and remove clusters that appear in the parameter space which correspond to straight line features is shown. Experimental results are presented to validate this model.

Description

Subject(s)

vícesměrové senzory, panoramické obrazy, extrakce znaků

Citation

Journal of WSCG. 2002, vol. 10, no. 1-2, p. 179-186.