2016 11th ACM/IEEE International Conference on Human-Robot Interaction (HRI) 2016
DOI: 10.1109/hri.2016.7451881
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Learning complex sequential tasks from demonstration: A pizza dough rolling case study

Abstract: This paper introduces a hierarchical framework that is capable of learning complex sequential tasks from human demonstrations through kinesthetic teaching, with minimal human intervention. Via an automatic task segmentation and action primitive discovery algorithm, we are able to learn both the high-level task decomposition (into action primitives), as well as low-level motion parameterizations for each action, in a fully integrated framework. In order to reach the desired task goal, we encode a task metric ba… Show more

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Cited by 38 publications
(30 citation statements)
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“…. , d} and the rate of change of (17) and (19) are the same, the motion reaches x c when t = +∞, the dynamical system (1) and (2) with respect to (5) and (6) contacts the surface at x c ; i.e. Objective 2 is satisfied.…”
Section: Summary and Discussionmentioning
confidence: 97%
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“…. , d} and the rate of change of (17) and (19) are the same, the motion reaches x c when t = +∞, the dynamical system (1) and (2) with respect to (5) and (6) contacts the surface at x c ; i.e. Objective 2 is satisfied.…”
Section: Summary and Discussionmentioning
confidence: 97%
“…lim t→+∞ q 1 Tẋ = lim t→+∞ e −tω (q 1 Tẋ 0 − (q 1 T x 0 ω + q 1 Tẋ 0 )ωt) = 0. Hence, the motion generated by 1 and 2 with respect to (4) and (5), enters the contact surface with zero normal velocity. Hence, Objective 1 is satisfied.…”
Section: Summary and Discussionmentioning
confidence: 99%
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“…By using a nonlinear differential equation to be learned to represent an observed movement, the researchers built a library of movements by labeling each recorded movement according to task and con text (e.g., grasping, placing, and realizing). In [13], a hierarchical framework capable of learning complex sequential tasks from human demonstrations was proposed. Through a task-segmentation and action-primitive discovery algorithm, both the high-level task decomposition and low-level motion parameterizations were achieved for each action.…”
Section: Segmenting Complex Movementsmentioning
confidence: 99%
“…Task-space motion generators learned from demonstrations all rely on projecting the desired task-space velocity into joint-space via Jacobian Pseudo-Inverse IK approximations and variants thereof [1]. When the main focus is on executing a specific task-space behavior, regardless of a joint-space constraint, this approach is sufficient [13], [14]. However, for other applications, such an approach yields significant problems [15].…”
mentioning
confidence: 99%