JOURNAL ARTICLE

From demonstrations to task-space specifications. Using causal analysis to extract rule parameterization from demonstrations

Daniel AngelovYordan HristovSubramanian Ramamoorthy

Year: 2020 Journal:   Autonomous Agents and Multi-Agent Systems Vol: 34 (2)   Publisher: Springer Science+Business Media

Abstract

Abstract Learning models of user behaviour is an important problem that is broadly applicable across many application domains requiring human–robot interaction. In this work, we show that it is possible to learn generative models for distinct user behavioural types, extracted from human demonstrations, by enforcing clustering of preferred task solutions within the latent space. We use these models to differentiate between user types and to find cases with overlapping solutions. Moreover, we can alter an initially guessed solution to satisfy the preferences that constitute a particular user type by backpropagating through the learned differentiable models. An advantage of structuring generative models in this way is that we can extract causal relationships between symbols that might form part of the user’s specification of the task, as manifested in the demonstrations. We further parameterize these specifications through constraint optimization in order to find a safety envelope under which motion planning can be performed. We show that the proposed method is capable of correctly distinguishing between three user types, who differ in degrees of cautiousness in their motion, while performing the task of moving objects with a kinesthetically driven robot in a tabletop environment. Our method successfully identifies the correct type, within the specified time, in 99% [97.8–99.8] of the cases, which outperforms an IRL baseline. We also show that our proposed method correctly changes a default trajectory to one satisfying a particular user specification even with unseen objects. The resulting trajectory is shown to be directly implementable on a PR2 humanoid robot completing the same task.

Keywords:
Computer science Task (project management) Trajectory Generative model Constraint (computer-aided design) Programming by demonstration Generative grammar Artificial intelligence Robot Motion (physics) Space (punctuation) Cluster analysis Machine learning Differentiable function Envelope (radar) Human–computer interaction Mathematics

Metrics

1
Cited By
0.15
FWCI (Field Weighted Citation Impact)
38
Refs
0.44
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Robot Manipulation and Learning
Physical Sciences →  Engineering →  Control and Systems Engineering
Reinforcement Learning in Robotics
Physical Sciences →  Computer Science →  Artificial Intelligence
Human Pose and Action Recognition
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition

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