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Crossing Boundaries: Multi-Level Introspection in a Complex Robotic Architecture for Automatic Performance Improvements

机译:跨越边界:复杂的机器人体系结构中的多层次自省,可自动提高性能

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摘要

Introspection mechanisms are employed in agent architectures to improve agent performance. However, there is currently no approach to introspection that makes automatic adjustments at multiple levels in the implemented agent system. We introduce our novel multi-level introspection framework that can be used to automatically adjust architectural configurations based on the introspection results at the agent, infrastructure and component level. We demonstrate the utility of such adjustments in a concrete implementation on a robot where the high-level goal of the robot is used to automatically configure the vision system in a way that minimizes resource consumption while improving overall task performance.
机译:代理程序体系结构中使用了自省机制来提高代理程序性能。但是,当前没有自省的方法可以在已实现的代理程序系统中的多个级别上进行自动调整。我们介绍了新颖的多级自省框架,该框架可用于基于代理,基础架构和组件级别的自省结果自动调整体系结构配置。我们在机器人的具体实现中演示了此类调整的实用性,其中机器人的高级目标用于以最小化资源消耗并改善总体任务性能的方式自动配置视觉系统。

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