When transporting an object, we unconsciously adapt our movement to its properties, for instance by slowing down when the item is fragile. The most relevant features of an object are immediately revealed to a human observer by the way the handling occurs, without any need for verbal description. It would greatly facilitate collaboration to enable humanoid robots to perform movements that convey similar intuitive cues to the observers. In this work, we focus on how to generate robot motion adapted to the hidden properties of the manipulated objects, such as their weight and fragility. We explore the possibility of leveraging Generative Adversarial Networks to synthesize new actions coherent with the properties of the object. The use of a generative approach allows us to create new and consistent motion patterns, without the need of collecting a large number of recorded human-led demonstrations. Besides, the informative content of the actions is preserved. Our results show that Generative Adversarial Nets can be a powerful tool for the generation of novel and meaningful transportation actions, which result effectively modulated as a function of the object weight and the carefulness required in its handling.
翻译:当一个物体运输时,我们无意中调整我们的行动,使其适应其特性,例如当该物体脆弱时,可以放慢速度。一个物体最相关的特征通过处理方式立即向人类观察者透露,无需口头描述。这将极大地促进协作,使人造机器人能够进行向观察者传递类似直觉提示的运动。在这项工作中,我们侧重于如何产生机器人运动,使其适应被操纵物体的隐藏特性,例如其重量和脆弱性。我们探索利用基因反转网络来综合与该物体特性一致的新行动的可能性。使用基因化方法使我们能够创造新的和一致的运动模式,而不需要收集大量记录的人为显示。此外,行动的信息内容得到保存。我们的结果显示,基因反转网络可以成为产生新颖和有意义的运输行动的有力工具,从而有效地调节物体重量和处理过程中所需的谨慎性功能。