Language-modulated Actions using Deep Reinforcement Learning for Safer Human-Robot Interaction
Proceeding of the International PhD Conference on Safe and Social Robotics (SSR-2018),
pages 31--33,
- Sep 2018
Spoken language can be an efficient and intuitive
way to warn robots about threats. Guidance and warnings
from a human can be used to inform and modulate a robot's
actions. An open research question is how the instructions and
warnings can be integrated in the planning of the robot to
improve safety. Our goal is to address this problem by defining
a Deep Reinforcement Learning (DRL) agent to determine the
intention of a given spoken instruction, especially in a domestic
task, and generate a high-level sequence of actions to fulfill
the given instruction. The DRL agent will combine vision and
language to create a multi-modal state representation of the
environment. We will also focus on how warnings can be used
to shape the DRL's reward, concentrating on the recognition
of the emotional state of the human in an interaction with the
robot. Finally, we will use language instructions to determine
a safe operational space for the robot.
@InProceedings{ZMWW18a, author = {Zamani, Mohammad Ali and Magg, Sven and Weber, Cornelius and Wermter, Stefan}, title = {Language-modulated Actions using Deep Reinforcement Learning for Safer Human-Robot Interaction}, booktitle = {Proceeding of the International PhD Conference on Safe and Social Robotics (SSR-2018)}, editors = {}, number = {}, volume = {}, pages = {31--33}, year = {2018}, month = {Sep}, publisher = {}, doi = {}, }