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Goal-Directed Reasoning and Cooperation in Robots in Shared Workspaces: an Internal Simulation Based Neural Framework

机译:共享工作空间中机器人的目标导向推理与合作:基于内部模拟的神经框架

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摘要

From social dining in households to product assembly in manufacturing lines, goal-directed reasoning and cooperation with other agents in shared workspaces is a ubiquitous aspect of our day-to-day activities. Critical for such behaviours is the ability to spontaneously anticipate what is doable by oneself as well as the interacting partner based on the evolving environmental context and thereby exploit such information to engage in goal-oriented action sequences. In the setting of an industrial task where two robots are jointly assembling objects in a shared workspace, we describe a bioinspired neural architecture for goal-directed action planning based on coupled interactions between multiple internal models, primarily of the robot’s body and its peripersonal space. The internal models (of each robot’s body and peripersonal space) are learnt jointly through a process of sensorimotor exploration and then employed in a range of anticipations related to the feasibility and consequence of potential actions of two industrial robots in the context of a joint goal. The ensuing behaviours are demonstrated in a real-world industrial scenario where two robots are assembling industrial fuse-boxes from multiple constituent objects (fuses, fuse-stands) scattered randomly in their workspace. In a spatially unstructured and temporally evolving assembly scenario, the robots employ reward-based dynamics to plan and anticipate which objects to act on at what time instances so as to successfully complete as many assemblies as possible. The existing spatial setting fundamentally necessitates planning collision-free trajectories and avoiding potential collisions between the robots. Furthermore, an interesting scenario where the assembly goal is not realizable by either of the robots individually but only realizable if they meaningfully cooperate is used to demonstrate the interplay between perception, simulation of multiple internal models and the resulting complementary goal-directed actions of both robots. Finally, the proposed neural framework is benchmarked against a typically engineered solution to evaluate its performance in the assembly task. The framework provides a computational outlook to the emerging results from neurosciences related to the learning and use of body schema and peripersonal space for embodied simulation of action and prediction. While experiments reported here engage the architecture in a complex planning task specifically, the internal model based framework is domain-agnostic facilitating portability to several other tasks and platforms.Electronic supplementary materialThe online version of this article (10.1007/s12559-018-9553-1) contains supplementary material, which is available to authorized users.
机译:从家庭中的社交用餐到生产线中的产品组装,目标导向的推理以及与其他工作人员在共享工作空间中的合作是我们日常活动中无处不在的方面。此类行为的关键在于,能够根据不断发展的环境上下文自发地预测自己以及与交互伙伴之间可以做什么,并由此利用此类信息参与面向目标的动作序列。在两个机器人在一个共享的工作空间中共同组装对象的工业任务中,我们描述了一种基于生物启发的神经体系结构,用于基于多个内部模型(主要是机器人的身体及其周围环境)之间的耦合相互作用进行目标定向的行动计划。内部模型(每个机器人的身体和周围空间)是通过感觉运动探索过程共同学习的,然后在一系列预期中应用,这些预期与两个工业机器人在共同目标的背景下可能采取的行动的可行性和后果有关。随后的行为在现实世界的工业场景中得到了证明,其中两个机器人从随机散布在其工作空间中的多个组成对象(保险丝,保险丝座)组装工业保险丝盒。在空间上无结构且随时间演变的装配场景中,机器人采用基于奖励的动力学来计划和预测在什么情况下要作用于哪些对象,从而成功完成尽可能多的装配。现有的空间设置从根本上需要规划无碰撞的轨迹并避免机器人之间的潜在碰撞。此外,一个有趣的场景表明了组装目标不能由两个机器人中的任何一个单独实现,而只有在它们有意义地协作时才可以实现,这说明了感知,多个内部模型的仿真以及由此产生的互补的目标导向动作之间的相互作用。 。最后,将所提出的神经框架与典型工程解决方案进行基准测试,以评估其在组装任务中的性能。该框架为神经科学的新兴结果提供了计算前景,这些结果与身体图式和人际空间的学习和使用有关,用于行为和预测的具体模拟。尽管此处报告的实验专门使体系结构参与了复杂的计划任务,但基于内部模型的框架是领域不可知的,便于将其移植到其他几个任务和平台上。电子补充材料本文的在线版本(10.1007 / s12559-018-9553-1) )包含补充材料,授权用户可以使用。

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