The paper deals with the role of line features in self-localization, when an extended Kalman filter is adopted. First, a theoretical analysis is introduced, showing how the amount of range measurements contributing to lines extracted from 2D range data affects the localization accuracy. Second, a novel approach for line extraction, which takes the theoretical analysis into accountis considered. Experimental results are used to discuss the main properties of the system.

Learning to extract line features: beyond split and merge

MASTROGIOVANNI, FULVIO;SGORBISSA, ANTONIO;ZACCARIA, RENATO UGO RAFFAELE
2008-01-01

Abstract

The paper deals with the role of line features in self-localization, when an extended Kalman filter is adopted. First, a theoretical analysis is introduced, showing how the amount of range measurements contributing to lines extracted from 2D range data affects the localization accuracy. Second, a novel approach for line extraction, which takes the theoretical analysis into accountis considered. Experimental results are used to discuss the main properties of the system.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11567/243355
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