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Common World Model for Unmanned Systems: Phase 2

机译:无人机通用世界模型:第2阶段

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The Robotics Collaborative Technology Alliance (RCTA) seeks to provide adaptive robot capabilities which move beyond traditional metric algorithms to include cognitive capabilities. Key to this effort is the Common World Model, which moves beyond the state-of-the-art by representing the world using semantic and symbolic as well as metric information. It joins these layers of information to define objects in the world. These objects may be reasoned upon jointly using traditional geometric, symbolic cognitive algorithms and new computational nodes formed by the combination of these disciplines to address Symbol Grounding and Uncertainty. The Common World Model must understand how these objects relate to each other. It includes the concept of Self-Information about the robot. By encoding current capability, component status, task execution state, and their histories we track information which enables the robot to reason and adapt its performance using Meta-Cognition and Machine Learning principles. The world model also includes models of how entities in the environment behave which enable prediction of future world states. To manage complexity, we have adopted a phased implementation approach. Phase 1, published in these proceedings in 2013, presented the approach for linking metric with symbolic information and interfaces for traditional planners and cognitive reasoning. Here we discuss the design of "Phase 2" of this world model, which extends the Phase 1 design API, data structures, and reviews the use of the Common World Model as part of a semantic navigation use case.
机译:机器人协作技术联盟(RCTA)寻求提供自适应机器人功能,该功能超越了传统的度量算法,而包括认知功能。这项工作的关键是通用世界模型,它通过使用语义和符号以及度量信息来表示世界,从而超越了最新技术。它结合了这些信息层以定义世界上的对象。可以结合使用传统的几何,符号认知算法和由这些学科的组合形成的新计算节点来推理这些对象,以解决符号接地和不确定性问题。通用世界模型必须了解这些对象之间的关系。它包括有关机器人的自我信息的概念。通过对当前功能,组件状态,任务执行状态及其历史进行编码,我们可以跟踪信息,从而使机器人能够使用元认知和机器学习原理进行推理并调整其性能。世界模型还包括环境中实体行为的模型,这些模型可以预测未来的世界状态。为了管理复杂性,我们采用了分阶段实施的方法。 2013年在这些程序中发布的第1阶段介绍了将度量标准与符号信息和接口联系起来的方法,以供传统计划者和认知推理使用。在这里,我们讨论该世界模型的“第2阶段”的设计,该设计扩展了第1阶段的设计API,数据结构,并回顾了通用世界模型作为语义导航用例的一部分的使用。

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