Maniadakis Michail, Hourdakis Emmanouil, Sigalas Markos, Piperakis Stylianos, Koskinopoulou Maria, Trahanias Panos
Institute of Computer Science, Foundation for Research and Technology - Hellas (FORTH), Heraklion, Greece.
Front Robot AI. 2020 Nov 12;7:503452. doi: 10.3389/frobt.2020.503452. eCollection 2020.
Contemporary research in human-machine symbiosis has mainly concentrated on enhancing relevant sensory, perceptual, and motor capacities, assuming short-term and nearly momentary interaction sessions. Still, human-machine confluence encompasses an inherent temporal dimension that is typically overlooked. The present work shifts the focus on the temporal and long-lasting aspects of symbiotic human-robot interaction (sHRI). We explore the integration of three time-aware modules, each one focusing on a diverse part of the sHRI timeline. Specifically, the Episodic Memory considers past experiences, the Generative Time Models estimate the progress of ongoing activities, and the Daisy Planner devices plans for the timely accomplishment of goals. The integrated system is employed to coordinate the activities of a multi-agent team. Accordingly, the proposed system (i) predicts human preferences based on past experience, (ii) estimates performance profile and task completion time, by monitoring human activity, and (iii) dynamically adapts multi-agent activity plans to changes in expectation and Human-Robot Interaction (HRI) performance. The system is deployed and extensively assessed in real-world and simulated environments. The obtained results suggest that building upon the unfolding and the temporal properties of team tasks can significantly enhance the fluency of sHRI.
当代人机共生研究主要集中在增强相关的感官、感知和运动能力上,假设是短期且几乎瞬间的交互过程。然而,人机融合包含一个通常被忽视的内在时间维度。目前的工作将重点转移到共生人机交互(sHRI)的时间和长期方面。我们探索了三个时间感知模块的整合,每个模块专注于sHRI时间线的不同部分。具体来说,情景记忆考虑过去的经历,生成时间模型估计正在进行的活动的进展,而雏菊规划器则为及时完成目标制定计划。该集成系统用于协调多智能体团队的活动。因此,所提出的系统(i)根据过去的经验预测人类偏好,(ii)通过监测人类活动估计性能概况和任务完成时间,以及(iii)使多智能体活动计划动态适应期望和人机交互(HRI)性能的变化。该系统在现实世界和模拟环境中进行了部署和广泛评估。所得结果表明,基于团队任务的展开和时间特性可以显著提高sHRI的流畅性。