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Semantic Place Understanding for Human–Robot Coexistence—Toward Intelligent Workplaces

机译:对人机共存对智能工作场所的语义的理解

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Recent introductions of robots to everyday scenarios have revealed unprecedented opportunities for collaboration and social interaction between robots and people. However, to date, such interactions are hampered by a significant challenge: having a semantic understanding of their environment. Even simple requirements, such as "a robot should always be in the kitchen when a person is there," are difficult to implement without prior training. In this paper, we advocate that robot-people coexistence can he leveraged to enhance the semantic understanding of the shared environment and improve situation awareness. We propose a probabilistic framework that combines human activity sensor data generated by smart wearables with low-level localization data generated by robots. Based on this low-level information and leveraging colocation events between a user and a robot, it can reason about the two types of semantic information: first, semantic maps, i.e., the utility of each room and, second, space usage semantics, i.e., tracking humans and robots through rooms of different utilities. The proposed system relies on two-way sharing of information between the robot and the user. In the first phase, user activities indicative of room utility are inferred from wearable devices and shared with the robot, enabling it to gradually build a semantic map of the environment. In the second phase, via colo-cation events, the robot teaches the user device to recognize the type of room where they are colocated. Over time, robot and user become increasingly independent and capable of semantic scene understanding.
机译:最近向日常情景引入机器人介绍了机器人与人之间的合作和社会互动的前所未有的机会。然而,迄今为止,这种相互作用受到重大挑战的阻碍:对他们的环境具有语义理解。即使是简单的要求,例如“当一个人在那里时,机器人应该始终在厨房里,”难以在没有事先训练的情况下实施。在本文中,我们倡导机器人共存可以利用,以提高对共同环境的语义理解,提高局势意识。我们提出了一种概率框架,其结合了由机器人产生的低级定位数据产生的智能穿戴设备生成的人类活动传感器数据。基于该低级信息和用户和机器人之间的射流事件,它可以推理两种类型的语义信息:第一,语义映射,即每个房间的实用性,第二,空间使用语义,即,通过不同公用事业的房间跟踪人类和机器人。所提出的系统依赖于机器人和用户之间的信息的双向共享。在第一阶段中,从可穿戴设备推断出描述房用的用户活动并与机器人共享,使其逐步构建环境的语义地图。在第二阶段,通过Colo-Cation事件,机器人教导用户设备识别它们被共同定位的房间的类型。随着时间的推移,机器人和用户变得越来越独立,能够对语义的理解。

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