Line-based global descriptor for omnidirectional vision

Conference Paper

Abstract

Scene understanding is a widely studied problem in computer vision. Many works approach this problem in indoor environments assuming constraints about the scene, such as the typical Manhattan World assumption. The goal of this work is to design and evaluate a global descriptor for indoor panoramic images that encloses information about the 3D structure. This descriptor is based on the detection of representative lines of the scene, which encode the scene structure. Our work focuses on omnidirectional imagery, where observed lines are longer than in conventional images and the whole scene is

Conference Name

International Conference on Image Processing (ICIP)

Year of Publication

2014

Publisher

IEEE