Enhancing Perceived Safety in Human–Robot Collaborative Construction Using Immersive Virtual Environments
You, Sangseok; Kim, Jeong-Hwan; Lee, SangHyun; Kamat, Vineet; Robert, Lionel + "Jr"
2018-09-16
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Citation
You, S., Kim, J., Lee, S., Kamat, V., Robert, L. P. 2018. Enhancing Perceived Safety in Human–Robot Collaborative Construction Using Immersive Virtual Environments, Automation in Construction, 96, pp. 161-170.
Abstract
Advances in robotics now permit humans to work collaboratively with robots. However, humans often feel unsafe working alongside robots. Our knowledge of how to help humans overcome this issue is limited by two challenges. One, it is difficult, expensive and time-consuming to prototype robots and set up various work situations needed to conduct studies in this area. Two, we lack strong theoretical models to predict and explain perceived safety and its influence on human–robot work collaboration (HRWC). To address these issues, we introduce the Robot Acceptance Safety Model (RASM) and employ immersive virtual environments (IVEs) to examine perceived safety of working on tasks alongside a robot. Results from a between-subjects experiment done in an IVE show that separation of work areas between robots and humans increases perceived safety by promoting team identification and trust in the robot. In addition, the more participants felt it was safe to work with the robot, the more willing they were to work alongside the robot in the future.Publisher
Automation in Construction
Other DOIs
Subjects
Human Robot Interaction HRI Robotics Teaming with Robots Working with Robots Team Identification Robot Trust Trusting Robots Human–Robot Work Collaboration Human Robot Work Collaboration Immersive Virtual Environment Virtual Reality Robot Acceptance Safety Model Intention to Work with Robot Robotic Co-worker Construction with robots Cobots Robot Safety Construction Work Human Robot Collaborative Construction Human Robot Collaboration Coordinating with Robots Construction Robots Human Computer Interaction Robotics and Automation Construction Automation Robotics and Autonomous Systems Autonomous Robots Work Robotics Humanoid Robots Intelligent & Robotic Systems Advanced Robotic Systems
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Article
Metadata
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