论文标题
通过生成对抗网络的综合和执行交流机器人运动
Synthesis and Execution of Communicative Robotic Movements with Generative Adversarial Networks
论文作者
论文摘要
对象操纵是我们每天进行的自然活动。人类如何处理对象不仅可以传达行动的故意,也可以传达我们操作的上下文的关键方面,还可以传达所涉及的对象的属性,而无需明确的口头描述。由于人类的智能包括阅读上下文的能力,因此允许机器人执行直觉传达这种信息的动作将极大地促进协作。在这项工作中,我们专注于如何在两个不同的机器人平台上转移相同的运动学调制,这些运动学调制在操纵细腻的物体时采用,旨在赋予机器人在动作中表现出谨慎的能力。我们选择调节机器人最终效应器采用的速度曲线,灵感来自于人类运输具有不同特征的对象时所做的事情。我们利用了一个新颖的生成对抗网络架构,该结构接受了人类运动学示例,以概括它们并产生新的和有意义的速度概况,要么与谨慎或不仔细的态度相关。这种方法将允许下一代机器人根据感知到的上下文选择最合适的运动风格,并自主产生其运动动作执行。
Object manipulation is a natural activity we perform every day. How humans handle objects can communicate not only the willfulness of the acting, or key aspects of the context where we operate, but also the properties of the objects involved, without any need for explicit verbal description. Since human intelligence comprises the ability to read the context, allowing robots to perform actions that intuitively convey this kind of information would greatly facilitate collaboration. In this work, we focus on how to transfer on two different robotic platforms the same kinematics modulation that humans adopt when manipulating delicate objects, aiming to endow robots with the capability to show carefulness in their movements. We choose to modulate the velocity profile adopted by the robots' end-effector, inspired by what humans do when transporting objects with different characteristics. We exploit a novel Generative Adversarial Network architecture, trained with human kinematics examples, to generalize over them and generate new and meaningful velocity profiles, either associated with careful or not careful attitudes. This approach would allow next generation robots to select the most appropriate style of movement, depending on the perceived context, and autonomously generate their motor action execution.