Jessie Y.C. Chen, M. Barnes, Anthony R. Selkowitz, K. Stowers, Shan G. Lakhmani, N. Kasdaglis
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引用次数: 10
Abstract
We developed the user interfaces for two Human-Robot Interaction (HRI) tasking environments: dismounted infantry interacting with a ground robot (Autonomous Squad Member) and human interaction with an intelligent agent to manage a team of heterogeneous robotic vehicles (IMPACT). These user interfaces were developed based on the Situation awareness-based Agent Transparency (SAT) model. User testing showed that as agent transparency increased, so did overall human-agent team performance. Participants were able to calibrate their trust in the agent more appropriately as agent transparency increased.