作者
Ran Tian, Masayoshi Tomizuka, Anca D Dragan, Andrea Bajcsy
发表日期
2023/3/13
图书
Proceedings of the 2023 ACM/IEEE international conference on human-robot interaction
页码范围
350-358
简介
Humans have internal models of robots (like their physical capabilities), the world (like what will happen next), and their tasks (like a preferred goal). However, human internal models are not always perfect: for example, it is easy to underestimate a robot's inertia. Nevertheless, these models change and improve over time as humans gather more experience. Interestingly, robot actions influence what this experience is, and therefore influence how people's internal models change. In this work we take a step towards enabling robots to understand the influence they have, leverage it to better assist people, and help human models more quickly align with reality. Our key idea is to model the human's learning as a nonlinear dynamical system which evolves the human's internal model given new observations. We formulate a novel optimization problem to infer the human's learning dynamics from demonstrations that …
引用总数
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R Tian, M Tomizuka, AD Dragan, A Bajcsy - Proceedings of the 2023 ACM/IEEE international …, 2023