使用基于上下文的映射增强自主移动机器人的态势感知(2012年10月)

Charles V. Smith, M. V. Doran, R. J. Daigle, T. G. Thomas
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引用次数: 3

摘要

我们的机构正在进行研究项目,在各种环境中利用自主移动机器人。这些机器人导航并与人类和他们的环境互动。作为这一努力的一部分,提供了一个整合导航操作和语音交互以对上下文刺激作出反应的框架。该框架提供了一个易于配置和修改的系统。该框架的基础是将人性的基本原理与传感器输入的解释混合在一起。实时和环境信息的结合是态势感知的核心。基于上下文的映射允许系统学习环境上下文以及如何从实时交互中识别它。基于上下文的映射技术将按上下文值优先排序的数据链接到可视化或代表性地图上的物理位置。该系统以自适应的方式对对象和事件进行分类。通过在给定情况下确定适当的行为,移动机器人只使用相关的知识和数据。将这些信息存储起来,以便在适当的时候使用历史数据和实时数据。这种方法允许机器人访问之前收集的数据进行统计参考。当从各种感官输入中收集数据时,在该背景下的加权贡献是确定的。本研究考察了自主移动机器人的部署。该机器人能够在包括室内和室外环境在内的环境中工作。语音被用来作为机器人的输入和响应解释。机器人最初是在监督模式下训练的,但在启发式和调整完成后,机器人能够适当地平衡传感器并在没有监督的情况下学习。结果是一个可以自主导航并对环境做出适当反应的机器人。实验证明了机器人在室内和室外环境中有效工作的能力,并在它们之间进行了转换。机器人还能够使用传感器信息为某个位置创建一个定义的签名。经过这次训练,机器人能够在动态环境中表现出态势感知,回答许多关于周围环境状态的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced situational awareness in autonomous mobile robots using context-based mapping (October 2012)
Our institution has on-going research projects which utilize autonomous mobile robots in a variety of settings. These robots navigate and interact with humans and their environment. As part of this effort a framework to integrate the navigational operation and the speech interaction to react to contextual stimuli is provided. This framework provides a system which is easy to configure and modify. The basis of this framework blends the rationale of human nature with the interpretation of sensor inputs. This combination of real-time and environmental information is at the core of having situational awareness. Context-based mapping allows the system to learn an environmental context and how to identify it from real-time interaction. Context-based mapping techniques link data prioritized by contextual value to physical locations on a visual or representative map. This system categorizes objects and events in an adaptive way. By determining the appropriate behavior in a given situation, a mobile robot uses only the relevant knowledge and data. This information is stored to allow both historical and real-time data to be used as appropriate. This approach allows the robot to access the previously collected data for statistical reference. As data are collected from various sensory inputs, the weighted contribution in that context is determined. This research examined the deployment of an autonomous mobile robot. The robot was able to function in the environment, which included both indoor and outdoor settings. Speech was used for input and as response explanations by the robot. The robot was trained initially in a supervised mode, but after the heuristics and adjustments had been reached, the robot was able to balance the sensors appropriately and learn without supervision. The result was a robot that could navigate autonomously and respond to the environment appropriately. Experiments were performed to demonstrate the ability of the robot to function effectively in indoor and outdoor environments and transition between them. The robot was also able to create a defined signature for a location using sensor information. After this training, the robot was able to exhibit situational awareness in dynamic environments, answering numerous questions regarding the state of the surrounding environment.
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