A Taxonomy of Semantic Information in Robot-Assisted Disaster Response

Tianshu Ruan, Hao Wang, Rustam Stolkin, Manolis Chiou
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Abstract

This paper proposes a taxonomy of semantic information in robot-assisted disaster response. Robots are increasingly being used in hazardous environment industries and emergency response teams to perform various tasks. Operational decision-making in such applications requires a complex semantic understanding of environments that are remote from the human operator. Low-level sensory data from the robot is transformed into perception and informative cognition. Currently, such cognition is predominantly performed by a human expert, who monitors remote sensor data such as robot video feeds. This engenders a need for AI-generated semantic understanding capabilities on the robot itself. Current work on semantics and AI lies towards the relatively academic end of the research spectrum, hence relatively removed from the practical realities of first responder teams. We aim for this paper to be a step towards bridging this divide. We first review common robot tasks in disaster response and the types of information such robots must collect. We then organize the types of semantic features and understanding that may be useful in disaster operations into a taxonomy of semantic information. We also briefly review the current state-of-the-art semantic understanding techniques. We highlight potential synergies, but we also identify gaps that need to be bridged to apply these ideas. We aim to stimulate the research that is needed to adapt, robustify, and implement state-of-the-art AI semantics methods in the challenging conditions of disasters and first responder scenarios.
机器人辅助灾害响应中的语义信息分类
本文提出了机器人辅助灾害响应中语义信息的分类方法。机器人越来越多地用于危险环境行业和应急响应团队,以执行各种任务。此类应用程序中的操作决策需要对远离人类操作人员的环境具有复杂的语义理解。机器人的低级感知数据被转化为感知和信息认知。目前,这种认知主要由人类专家完成,他们监控远程传感器数据,如机器人视频馈送。这就需要在机器人本身上使用人工智能生成的语义理解能力。目前关于语义和人工智能的工作处于研究范围的相对学术的一端,因此相对脱离了第一反应团队的实际情况。我们希望这篇论文能成为弥合这一鸿沟的一步。我们首先回顾了灾难响应中常见的机器人任务以及这些机器人必须收集的信息类型。然后,我们将可能在灾难操作中有用的语义特征和理解类型组织到语义信息的分类中。我们还简要回顾了当前最先进的语义理解技术。我们强调潜在的协同效应,但我们也确定需要弥合的差距,以应用这些想法。我们的目标是促进在灾害和第一响应者场景的挑战性条件下适应、增强和实施最先进的人工智能语义方法所需的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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