Integrating topological and metric maps for mobile robot navigation: A statistical approach
Abstract
The problem of concurrent mapping and localization has received considerable attention in the mobile robotics community. Existing approaches can largely be grouped into two distinct paradigms: topological and metric. This paper proposes a method that integrates both. It poses the mapping problemas a statistical maximum likelihood problem, and devises an efficient algorithm for search in likelihood space. It presents an novel mapping algorithm that integrates two phases: a topological and a metric mapping phase. The topological mapping phase solves a global position alignment problem between potentially indistinguishable, significant places. The subsequent metric mapping phase produces a fine-grained metric map of the environment in floating-point resolution. The approach is demonstrated empirically to scale up to large, cyclic, and highly ambiguous environments.
BibTeX
@conference{Thrun-1998-16577,author = {Sebastian Thrun and J.-S. Gutmann and Dieter Fox and W. Burgard and B. Kuipers},
title = {Integrating topological and metric maps for mobile robot navigation: A statistical approach},
booktitle = {Proceedings of 15th National Conference on Artificial Intelligence (AAAI '98)},
year = {1998},
month = {July},
pages = {989 - 995},
}