Junctions: Detection, Classification and Reconstruction (0)
| Citations: | 24 - 1 self |
BibTeX
@MISC{Parida_junctions:detection,,
author = {Laxmi Parida and Davi Geiger and Robert Hummel},
title = {Junctions: Detection, Classification and Reconstruction},
year = {}
}
OpenURL
Abstract
Junctions are important features for image analysis and form a critical aspect of image understanding tasks such as object recognition. We present a unified approach to detecting (location of the center of the junction), classifying (by the number of wedges -- lines, corners, 3-junctions such as T or Y junctions, or 4-junctions such as X-junctions) and reconstructing junctions (in terms of radius size, the angles of each wedge and the intensity in each of the wedges) in images. Our main contribution is a modeling of the junction which is complex enough to handle all these issues and yet simple enough to admit an effective dynamic programming solution. Broadly, we use a template deformation framework along with a gradient criterium to detect radial partitions of the template. We use the minimum description length principle to obtain the optimal number of partitions that best describes the junction. Kona [27] is an implementation of this model. We (quantitatively) demonstrate the stabili...







