Vision-Based Monte Carlo Localization without Measurement: A Qualitative Approach during Update Phase

Nenhuma Miniatura disponível
Citações na Scopus
2
Tipo de produção
Artigo de evento
Data
2016-10-31
Autores
PERICO, D. H.
SANTOS, P. E.
Reinaldo Bianchi
Orientador
Periódico
Proceedings - 12th LARS Latin American Robotics Symposium and 3rd SBR Brazilian Robotics Symposium, LARS-SBR 2015 - Part of the Robotics Conferences 2015
Título da Revista
ISSN da Revista
Título de Volume
Citação
PERICO, D. H.; SANTOS, P. E.; BIANCHI, R. Vision-Based Monte Carlo Localization without Measurement: A Qualitative Approach during Update Phase.Proceedings - 12th LARS Latin American Robotics Symposium and 3rd SBR Brazilian Robotics Symposium, LARS-SBR 2015 - Part of the Robotics Conferences 2015, Oct. 2016.
Texto completo (DOI)
Palavras-chave
Resumo
© 2015 IEEE.This paper presents a qualitative approach for updating the particles used by Monte Carlo Localization (MCL) during a mobile robot localization procedure. The combination between MCL and qualitative data will be called, in this article, Hybrid Localization. The motivation of using qualitative data is to obtain a level of abstraction closer to the human categorization of space and, also, to have a more effective way of interaction between robots and humans. The proposal uses the concept of a qualitative ego sphere, whereby the robot will perceive the world using qualitative relations. As RoboCup Humanoid League offers a challenging domain for robot localization, this environment was used to perform the experiments of this work, where experiments consisted of comparing the robustness of the proposed approach to a traditional vision based MCL model. The results allowed us to conclude that the use of qualitative data can show similar performance when compared to the traditional Vision Based MCL, bringing the advantage of being closer to the way humans reason about space, which can improve the communication between robots, as well as the development of high-level strategies during a game.

Coleções