[MERL Seminar Series Spring 2024] Enhancing the Efficiency and Robustness of Human-Robot Interaction

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  • Опубліковано 17 бер 2024
  • [MERL Seminar Series Spring 2024] Enhancing the Efficiency and Robustness of Human-Robot Interactions
    Stefanos Nikolaidis, University of Southern California, presented a talk in the MERL Seminar Series on March 8, 2024.
    Abstract:
    While robots have been successfully deployed in factory floors and warehouses, there has been limited progress in having them perform physical tasks with people at home and in the workplace. I aim to bridge the gap between their current performance in human environments and what robots are capable of doing, by making human-robot interactions efficient and robust.
    In the first part of my talk, I discuss enhancing the efficiency of human-robot interactions by enabling robot manipulators to infer the preference of a human teammate and proactively assist them in a collaborative task. I show how we can leverage similarities between different users and tasks to learn compact representations of user preferences and use these representations as priors for efficient inference.
    In the second part, I talk about enhancing the robustness of human-robot interactions by algorithmically generating diverse and realistic scenarios in simulation that reveal system failures. I propose formulating the problem of algorithmic scenario generation as a quality diversity problem and show how standard quality diversity algorithms can discover surprising and unexpected failure cases. I then discuss the development of a new class of quality diversity algorithms that significantly improve the search of the scenario space and the integration of these algorithms with generative models, which enables the generation of complex and realistic scenarios.
    Finally, I conclude the talk with applications in mining operations, collaborative manufacturing and assistive care.
  • Наука та технологія

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