Lombardi Maria, Maiettini Elisa, De Tommaso Davide, Wykowska Agnieszka, Natale Lorenzo
Humanoid Sensing and Perception, Istituto Italiano di Tecnologia, Genova, Italy.
Social Cognition in Human-Robot Interaction, Istituto Italiano di Tecnologia, Genova, Italy.
Front Robot AI. 2022 Mar 7;9:770165. doi: 10.3389/frobt.2022.770165. eCollection 2022.
Social robotics is an emerging field that is expected to grow rapidly in the near future. In fact, it is increasingly more frequent to have robots that operate in close proximity with humans or even collaborate with them in joint tasks. In this context, the investigation of how to endow a humanoid robot with social behavioral skills typical of human-human interactions is still an open problem. Among the countless social cues needed to establish a natural social attunement, this article reports our research toward the implementation of a mechanism for estimating the gaze direction, focusing in particular on mutual gaze as a fundamental social cue in face-to-face interactions. We propose a learning-based framework to automatically detect eye contact events in online interactions with human partners. The proposed solution achieved high performance both and in experimental scenarios. Our work is expected to be the first step toward an attentive architecture able to endorse scenarios in which the robots are perceived as social partners.
社交机器人技术是一个新兴领域,预计在不久的将来会迅速发展。事实上,与人类近距离操作甚至在联合任务中与人类协作的机器人越来越常见。在这种背景下,如何赋予类人机器人以典型的人际互动社会行为技能仍是一个未解决的问题。在建立自然的社会协调所需的无数社会线索中,本文报告了我们为实现一种估计注视方向的机制所做的研究,特别关注相互注视这一面对面互动中的基本社会线索。我们提出了一个基于学习的框架,用于在与人类伙伴的在线互动中自动检测眼神接触事件。所提出的解决方案在实验场景中均取得了高性能。我们的工作有望成为迈向一种能够支持将机器人视为社会伙伴的场景的注意力架构的第一步。