2017 First IEEE International Conference on Robotic Computing (IRC) 2017
DOI: 10.1109/irc.2017.19
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Sequential Action Selection for Budgeted Localization in Robots

Abstract: Recent years have seen a fast growth in the number of applications of Machine Learning algorithms from Computer Science to Robotics. Nevertheless, while most such attempts were successful in maximizing robot performance after a long learning phase, to our knowledge none of them explicitly takes into account the budget in the algorithm evaluation: e.g. budget limitation on the learning duration or on the maximum number of possible actions by the robot. In this paper we introduce an algorithm for robot spatial l… Show more

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Cited by 2 publications
(2 citation statements)
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“…turn, check camera information, check laser information) within a¯xed budget (that limits the number of allowed actions) while providing the agent with su±cient information to localize itself within the environment. Preliminary results of this¯rst experiment have been presented at the IEEE Robotic Computing 2017 Conference [23]. The second experiment is performed again in simulation in order to test the ability of the algorithm to transfer acquired knowledge from an environment to another.…”
Section: Numerical Experimentsmentioning
confidence: 99%
“…turn, check camera information, check laser information) within a¯xed budget (that limits the number of allowed actions) while providing the agent with su±cient information to localize itself within the environment. Preliminary results of this¯rst experiment have been presented at the IEEE Robotic Computing 2017 Conference [23]. The second experiment is performed again in simulation in order to test the ability of the algorithm to transfer acquired knowledge from an environment to another.…”
Section: Numerical Experimentsmentioning
confidence: 99%
“…MRLS is found as an electric power actuator operated vehicle system, which is manipulated over the several industrial sectors by programming and nonprogramming path for shaping the various complicated and hazardous tasks. In accordance with [1,2], MRLS is an automatic mechanical-electronic vehicle system, which is capable to navigate around the unstructured route under danger environment. MRLS is able to perform the locomotion and need not be appended with persons as it can control its functions automatically by PLC (Programming Logic Circuit).…”
Section: Introductionmentioning
confidence: 99%