DocumentCode
1887080
Title
Enhancing recognizability of robotics environments
Author
Borghi, Giuseppe ; Pagello, Enrico ; Vianello, Marco
Author_Institution
IDSIA, Lugano, Switzerland
fYear
1997
fDate
22-24 Oct 1997
Firstpage
88
Lastpage
95
Abstract
We consider the problem of state recognizability in robotics environments modeled by partially observable Markov decision processes. To make the model of robot-environment interaction more reliable, in the usual state transition table, we add to the state transition probabilities an additional continuous metric via the mean and the variance of some significant sensor measurements suitable to be kept under a continuous form, such as odometric measurements. These information allow one to greatly enhance the state recognizability. Our approach is general, and can be applied to any robotics application that requires compensation of the uncertainties due to sensor errors and to the randomness of robot action effects on its environment. We have devised some possible applications to modeling the interaction between a manipulator and its world, but in this paper, only a specific application to the navigation problem for a mobile robot is illustrated to show the feasibility of our approach
Keywords
Markov processes; decision theory; error compensation; mobile robots; observability; path planning; probability; state estimation; uncertainty handling; error compensation; mobile robot; navigation; observability; odometric measurements; partially observable Markov decision processes; probability; robotics environments; sensor errors; state estimation; state recognizability; state transition; Graphics; Grounding; Learning; Navigation; Observability; Probability distribution; Robot sensing systems; Software performance; State estimation; Uncertainty;
fLanguage
English
Publisher
ieee
Conference_Titel
Advanced Mobile Robots, 1997. Proceedings., Second EUROMICRO workshop on
Conference_Location
Brescia
Print_ISBN
0-8186-8174-8
Type
conf
DOI
10.1109/EURBOT.1997.633583
Filename
633583
Link To Document