人-机器人间隔的自主控制:一种社会情境方法

Ross Mead, M. Matarić
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引用次数: 1

摘要

为了实现社会情境下的人机交互,机器人必须理解并控制空间的社会用途,采用类似于人类使用的通信机制。在这项工作中,我们研究了在人类和人类机器人交互过程中,语音和手势的产生和识别作为社会代理间距的函数。利用这些模型实现了机器人的自主近身控制器。控制器采用基于采样的方法,其中每个样本代表代理间姿态,以及代理语音和手势的产生和识别估计;粒子滤波利用这些估计来最大化机器人和人在交互过程中的性能。这种功能方法得出的姿势、语音和手势估计与相关文献一致。这项工作有助于理解控制近距离行为的潜在前文化过程,并对复杂交互和环境中机器人的鲁棒近距离控制器具有重要意义。
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Autonomous control of human-robot spacing: a socially situated approach
To enable socially situated human-robot interaction, a robot must both understand and control proxemics, the social use of space, to employ communication mechanisms analogous to those used by humans. In this work, we investigate speech and gesture production and recognition as a function of social agent spacing during both human-human and human-robot interactions. These models were used to implement an autonomous proxemic robot controller. The controller utilizes a sampling-based method, wherein each sample represents inter-agent pose, as well as agent speech and gesture production and recognition estimates; a particle filter uses these estimates to maximize the performance of both the robot and the human during the interaction. This functional approach yields pose, speech, and gesture estimates consistent with related literature. This work contributes to the understanding of the underlying pre-cultural processes that govern proxemic behavior, and has implications for robust proxemic controllers for robots in complex interactions and environments.
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