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Título | A PROBABILISTIC MULTIMODAL ALGORITHM FOR TRACKING MULTIPLE AND DYNAMIC OBJECTS |
Tipo de publicación | Book Chapter |
Año de publicación | 2004 |
Autores | Marron, M, Sotelo, MA, Garcia, JC |
Book Title | ROBOTICS: TRENDS, PRINCIPLES AND APPLICATIONS |
Series Title | Intelligent Automation and Soft Computing |
Volumen | 15 |
Páginas | 511-516 |
Fecha de publicación | 07/2004 |
Editorial | TSI Press |
Ciudad | Alburquerque (USA) |
Idioma de publicación | English |
Numero ISBN | 1-889335-21-5 |
Palabras clave | Crowded Environments, Multi-Object Tracking, Particle Filters, Probabilistic Algorithms |
Resumen | The work presented is related to the research area of autonomous navigation for mobile robots in unstructured, heavily crowded, and highly dynamic environments. One of the main tasks involved in this research topic is the obstacle tracking module that has been successfully developed with different kind of probabilistic algorithms. The reliability that these techniques have shown estimating position with noisy measurements make them the most adequate to the mentioned problem, but their high computational cost has made them only useful with few objects. In this paper a computational simple solution based on a multimodal particle filter is proposed to track multiple and dynamic obstacles in an unstructured environment and based on the noisy position measurements taken from sonar sensors. |
Resumen | The work presented is related to the research area of autonomous navigation for mobile robots in unstructured, heavily crowded, and highly dynamic environments. One of the main tasks involved in this research topic is the obstacle tracking module that has been successfully developed with different kind of probabilistic algorithms. The reliability that these techniques have shown estimating position with noisy measurements make them the most adequate to the mentioned problem, but their high computational cost has made them only useful with few objects. In this paper a computational simple solution based on a multimodal particle filter is proposed to track multiple and dynamic obstacles in an unstructured environment and based on the noisy position measurements taken from sonar sensors. |
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