Detecting physical collaborations in a group task using body-worn microphones and accelerometers

Jamie A. Ward, Gerald Pirkl, Peter Hevesi, P. Lukowicz
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引用次数: 7

Abstract

This paper presents a method of using wearable accelerometers and microphones to detect instances of ad-hoc physical collaborations between members of a group. 4 people are instructed to construct a large video wall and must cooperate to complete the task. The task is loosely structured with minimal outside assistance to better reflect the ad-hoc nature of many real world construction scenarios. Audio data, recorded from chest-worn microphones, is used to reveal information on collocation, i.e. whether or not participants are near one another. Movement data, recorded using 3-axis accelerometers worn on each person's head and wrists, is used to provide information on correlated movements, such as when participants help one another to lift a heavy object. Collocation and correlated movement information is then combined to determine who is working together at any given time. The work shows how data from commonly available sensors can be combined across multiple people using a simple, low power algorithm to detect a range of physical collaborations.
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使用穿戴式麦克风和加速度计检测小组任务中的物理协作
本文提出了一种使用可穿戴加速度计和麦克风来检测群体成员之间临时物理协作实例的方法。4个人被要求建造一个巨大的视频墙,必须合作完成任务。该任务结构松散,外部帮助最少,以更好地反映许多真实世界构建场景的临时性质。从佩戴在胸前的麦克风中记录的音频数据用于揭示搭配信息,即参与者是否彼此靠近。运动数据由佩戴在每个人头上和手腕上的3轴加速度计记录,用于提供相关运动的信息,例如参与者何时互相帮助举起重物。然后将搭配和相关的运动信息结合起来,以确定在任何给定时间谁在一起工作。这项工作展示了如何使用一种简单、低功耗的算法将来自常用传感器的数据在多人之间组合起来,以检测一系列物理协作。
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