Carnegie Mellon University
In this thesis, we develop a methodology that implicitly communicates a region of interest from a helmet-mounted depth camera on the human’s head to the robot and an information gain-based exploration objective that biases motion planning within the viewpoint provided by the human. We also study the human perception of robot efficiency in a search task to better understand how to design and develop robots that explore alongside human partners. The result is an aerial system that safely accesses regions of interest that may not be immediately viewable or reachable by the human. The approach is evaluated in simulation and with hardware experiments in a motion capture arena. Our findings from the user study suggest that (1) users’ trust in the robot is highly dependent on mission success and (2) participants perceived that they had more control over the robot when the mission was successful. The results highlight the importance of designing robust robots with transparent behaviors for successful human-robot collaboration.