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Online context-based object recognition for mobile robots
2017
2017 IEEE International Conference on Autonomous Robot Systems and Competitions (ICARSC)
This work proposes a robotic object recognition system that takes advantage of the contextual information latent in human-like environments in an online fashion. To fully leverage context, it is needed perceptual information from (at least) a portion of the scene containing the objects of interest, which could not be entirely covered by just an one-shot sensor observation. Information from a larger portion of the scenario could still be considered by progressively registering observations, but
doi:10.1109/icarsc.2017.7964083
dblp:conf/icarsc/Ruiz-SarmientoG17
fatcat:cx5ea3ronjcgranhsekmnvyfea