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Going Cognitive: A Demonstration of the Utility of Task-General Cognitive Architectures for Adaptive Robotic Task Performance

机译:去认知:用于适应机器人任务性能的任务通用认知架构的实用性的示范

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It has been claimed that a main advantage of cognitive architectures (compared to other types of specialized robotic architectures) is that they are task-general and can thus learn to perform any task as long as they have the right perceptual and action primitives. In this paper, we provide empirical evidence for this claim by directly comparing a high-performing custom robotic architecture developed for the standardized robotic "FetchIt!" challenge task to a hybrid cognitive robotic architecture that allows for online one-shot task learning and task modifications through natural language instructions. The results show that there is no disadvantage of running the hybrid architecture (i.e., no significant difference in overall performance or computational overhead compared to the custom architecture) while adding the flexibility of online one-shot task instruction and modification not available in the custom architecture.
机译:已经声称,认知架构(与其他类型的专业机器人架构相比)的主要优点是它们是任务通用,因此可以学习执行任何任务,只要它们具有正确的感知和动作原语。在本文中,我们通过直接比较为标准化机器人“救护措施”开发的高性能定制机器人架构提供了本发明索赔的经验证据。挑战任务到混合认知机器人架构,通过自然语言指令允许在线单次任务学习和任务修改。结果表明,运行混合架构(即,与自定义架构相比,整体性能或计算开销没有显着差异),同时在自定义体系结构中添加了在线单次任务指令和修改的灵活性。

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