Considering Human Behavior in Motion Planning for Smooth Human-Robot Collaboration in Close Proximity

It is well-known that a deep understanding of coworkers' behavior and preference is important for collaboration effectiveness. In this work, we present a method to accomplish smooth human-robot collaboration in close proximity by taking into account the human's behavior while planning the...

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Published in2018 27th IEEE International Symposium on Robot and Human Interactive Communication (RO-MAN) pp. 985 - 990
Main Authors Zhao, Xuan, Pan, Jia
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.08.2018
Subjects
Online AccessGet full text
ISSN1944-9437
DOI10.1109/ROMAN.2018.8525607

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Abstract It is well-known that a deep understanding of coworkers' behavior and preference is important for collaboration effectiveness. In this work, we present a method to accomplish smooth human-robot collaboration in close proximity by taking into account the human's behavior while planning the robot's trajectory. In particular, we first use an occupancy map to summarize human's movement preference over time, and such prior information is then considered in an optimization-based motion planner via two cost items: 1) avoidance of the workspace previously occupied by human, to eliminate the interruption and to increase the task success rate; 2) tendency to keep a safe distance between the human and the robot to improve the safety. In the experiments, we compare the collaboration performance among planners using different combinations of human-aware cost items, including the avoidance factor, both the avoidance and safe distance factor, and a baseline where no human-related factors are considered. The trajectories generated are tested in both simulated and real-world environments, and the results show that our method can significantly increase the collaborative task success rates and is also human-friendly.
AbstractList It is well-known that a deep understanding of coworkers' behavior and preference is important for collaboration effectiveness. In this work, we present a method to accomplish smooth human-robot collaboration in close proximity by taking into account the human's behavior while planning the robot's trajectory. In particular, we first use an occupancy map to summarize human's movement preference over time, and such prior information is then considered in an optimization-based motion planner via two cost items: 1) avoidance of the workspace previously occupied by human, to eliminate the interruption and to increase the task success rate; 2) tendency to keep a safe distance between the human and the robot to improve the safety. In the experiments, we compare the collaboration performance among planners using different combinations of human-aware cost items, including the avoidance factor, both the avoidance and safe distance factor, and a baseline where no human-related factors are considered. The trajectories generated are tested in both simulated and real-world environments, and the results show that our method can significantly increase the collaborative task success rates and is also human-friendly.
Author Zhao, Xuan
Pan, Jia
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  fullname: Pan, Jia
  organization: Department of Mechanical and Biomedical Engineering, City University of Hong Kong, Hong Kong
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Snippet It is well-known that a deep understanding of coworkers' behavior and preference is important for collaboration effectiveness. In this work, we present a...
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StartPage 985
SubjectTerms Collaboration
Collision avoidance
Planning
Robot sensing systems
Task analysis
Trajectory
Title Considering Human Behavior in Motion Planning for Smooth Human-Robot Collaboration in Close Proximity
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