Türkiye ve İran'da vatandaşlık ve etnisite
In: İstanbul Bilgi Üniversitesi yayınları 588
In: Sosyoloji 26
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In: İstanbul Bilgi Üniversitesi yayınları 588
In: Sosyoloji 26
In: Crime, Law and Social Change, Volume 41, Issue 3, p. 261-282
In: Crime, law and social change: an interdisciplinary journal, Volume 41, Issue 3, p. 261-282
ISSN: 0925-4994
[EN] Many practical tasks in robotic systems, such as cleaning windows, writing, or grasping, are inherently constrained. Learning policies subject to constraints is a challenging problem. In this paper, we propose a method of constraint-aware learning that solves the policy learning problem using redundant robots that execute a policy that is acting in the null space of a constraint. In particular, we are interested in generalizing learned null-space policies across constraints that were not known during the training. We split the combined problem of learning constraints and policies into two: first estimating the constraint, and then estimating a null-space policy using the remaining degrees of freedom. For a linear parametrization, we provide a closed-form solution of the problem. We also define a metric for comparing the similarity of estimated constraints, which is useful to pre-process the trajectories recorded in the demonstrations. We have validated our method by learning a wiping task from human demonstration on flat surfaces and reproducing it on an unknown curved surface using a force- or torque-based controller to achieve tool alignment. We show that, despite the differences between the training and validation scenarios, we learn a policy that still provides the desired wiping motion. ; The author(s) disclosed receipt of the following financial support for the research, auth/orship, and/or publication of this article: This work was supported by the Spanish Ministry of Economy and the European Union (grant number DPI2016-81002-R (AEI/FEDER, UE)), the European Union Horizon 2020, as part of the project Memory of Motion - MEMMO (project ID 780684), and the Engineering and Physical Sciences Research Council, UK, as part of the Robotics and AI hub in Future AI and Robotics for Space - FAIR-SPACE (grant number EP/R026092/1), and as part of the Centre for Doctoral Training in Robotics and Autonomous Systems at Heriot-Watt University and the University of Edinburgh (grant numbers EP/L016834/1 and ...
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