Title :
Localization in Urban Environments Using a Panoramic Gist Descriptor
Author :
Murillo, Ana C. ; Singh, Gagan ; Kosecka, Jana ; Guerrero, J.J.
Author_Institution :
Dept. de Inf. e Ing. de Sist., Univ. de Zaragoza, Zaragoza, Spain
Abstract :
Vision-based topological localization and mapping for autonomous robotic systems have received increased research interest in recent years. The need to map larger environments requires models at different levels of abstraction and additional abilities to deal with large amounts of data efficiently. Most successful approaches for appearance-based localization and mapping with large datasets typically represent locations using local image features. We study the feasibility of performing these tasks in urban environments using global descriptors instead and taking advantage of the increasingly common panoramic datasets. This paper describes how to represent a panorama using the global gist descriptor, while maintaining desirable invariance properties for location recognition and loop detection. We propose different gist similarity measures and algorithms for appearance-based localization and an online loop-closure detection method, where the probability of loop closure is determined in a Bayesian filtering framework using the proposed image representation. The extensive experimental validation in this paper shows that their performance in urban environments is comparable with local-feature-based approaches when using wide field-of-view images.
Keywords :
Bayes methods; filtering theory; image representation; robot vision; Bayesian filtering framework; appearance based localization; autonomous robotic systems; global descriptors; image features; image representation; location recognition; loop detection; panoramic datasets; panoramic gist descriptor; urban environment localization; vision based topological localization; Cameras; Databases; Image recognition; Image representation; Robots; Urban areas; Vocabulary; Appearance-based localization; computer vision; gist descriptor; omnidirectional images; recognition;
Journal_Title :
Robotics, IEEE Transactions on
DOI :
10.1109/TRO.2012.2220211