2014 IEEE International Conference on Robotics and Automation (ICRA) 2014
DOI: 10.1109/icra.2014.6907841
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A natural language planner interface for mobile manipulators

Abstract: Natural language interfaces for robot control aspire to find the best sequence of actions that reflect the behavior intended by the instruction. This is difficult because of the diversity of language, variety of environments, and heterogeneity of tasks. Previous work has demonstrated that probabilistic graphical models constructed from the parse structure of natural language can be used to identify motions that most closely resemble verb phrases. Such approaches however quickly succumb to computational bottlen… Show more

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Cited by 89 publications
(105 citation statements)
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References 12 publications
(9 reference statements)
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“…For example, a number of research-ers have built systems to satisfy the need for grounded language in a robot, including Steels and Hild (2012), Tellex et al (2014), and Eppe et al (2016). However, none of those systems conforms to the three aspects of a cognitive modeling approach outlined above.…”
Section: Research Contextmentioning
confidence: 99%
See 1 more Smart Citation
“…For example, a number of research-ers have built systems to satisfy the need for grounded language in a robot, including Steels and Hild (2012), Tellex et al (2014), and Eppe et al (2016). However, none of those systems conforms to the three aspects of a cognitive modeling approach outlined above.…”
Section: Research Contextmentioning
confidence: 99%
“…Previous work has approached the grounding problem using a variety of resources and approaches, for instance, either using annotated visual datasets (Silberer and Lapata, 2014;Socher et al, 2014;Naim et al, 2015;Al-Omari et al, 2016;Tellex et al, 2014;Matuszek et al, 2012Matuszek et al, , 2014, or through interactions with other agents or real humans (Kollar et al, 2013;Tellex et al, 2013;Thomason et al, 2015Thomason et al, , 2016Skocaj et al, 2016;Yu et al, 2016c), where feedback from other agents is used to learn new concepts.…”
Section: Introductionmentioning
confidence: 99%
“…Impressive thematic scope is achieved in (Berant et al 2013, Kwiatkowski et al 2013), but the target semantic language (for Freebase access) is still restricted to database operations such as join, intersection, and set cardinality. Another popular domain is command execution by robots (e.g., Tellex 2011, Howard et al 2013.…”
Section: Related Workmentioning
confidence: 99%
“…Impressive thematic scope is achieved in ), but the target semantic language (for Freebase access) is still restricted to database operations such as join, intersection, and set cardinality. Another popular domain is command execution by robots (e.g., Tellex 2011, Howard et al 2013.…”
Section: Related Workmentioning
confidence: 99%
“…Recently we have seen an explosion of work on learning semantic parsers (e.g., Matuszek, et al, 2012;Tellex et al, 2013;Branavan et al, 2010, Chen et al, 2011). While such work shows promise, the results are highly domain dependent and useful only for that domain.…”
Section: Introductionmentioning
confidence: 99%