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Task phase recognition for highly mobile workers in large building complexes

机译:大型建筑复合物中高级移动工人的任务阶段识别

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Being aware of activities of co-workers is a basic and vital mechanism for efficient work in highly distributed work settings. Thus, automatic recognition of the task phases the mobile workers are currently (or have been) in has many applications, e.g., efficient coordination of tasks by visualizing co-workers' task progress, automatic notifications based on context awareness, and record filing of task statuses and completions. This paper presents methods to sense and detect highly mobile workers' tasks phases in large building complexes. Large building complexes restrict the technologies available for sensing and recognizing the activities and task phases the workers currently perform as such technologies have to be easily deployable and maintainable at a large scale. The methods presented in this paper consist of features that utilize data from sensing systems which are common in large-scale indoor work environments, namely from a WiFi infrastructure providing coarse grained indoor positioning, from inertial sensors in the workers' mobile phones, and from a task management system yielding information about the scheduled tasks' start and end locations. The methods presented have low requirements on the accuracy of the indoor positioning, and thus come with low deployment and maintenance effort in real-world settings. We evaluated the proposed methods in a large hospital complex, where the highly mobile workers were recruited among the non-clinical workforce. The evaluation is based on manually labelled real-world data collected over 4 days of regular work life of the mobile workforce. The collected data yields 83 tasks in total involving 8 different orderlies from a major university hospital with a building area of 160, 000 m2. The results show that the proposed methods can distinguish accurately between the four most common task phases present in the orderlies' work routines, achieving Fi-Scores of 89.2%.
机译:了解同事的活动是高度分布式工作环境中有效工作的基本和重要机制。因此,自动识别任务阶段的移动工作者当前(或已经)在具有许多应用程序中,例如通过可视化同事的任务进度,基于上下文意识的自动通知,以及记录备份任务的自动通知,例如,对任务的高效协调状态和完成。本文介绍了感觉和检测大型建筑复合物中高级移动工人的任务阶段的方法。大型建筑复合体限制了可用于传感和认识到活动和任务阶段的技术和任务当前表演的活动,因为这种技术必须轻松地部署和可维护。本文呈现的方法包括利用来自大规模室内工作环境中常见的传感系统的数据的特征,即来自提供粗粒室内定位的WiFi基础设施,从工人移动电话中的惯性传感器以及来自任务管理系统产生有关计划任务的启动和结束位置的信息。呈现的方法对室内定位的准确性有很低的要求,因此在现实世界中提供了低部署和维护工作。我们在大型医院复合体中评估了拟议的方法,在那里招募了高级移动工作人员在非临床劳动力中招募。评估基于手动标记的现实数据,这些数据在移动劳动力的常规工作寿命范围内收集了4天。收集的数据总共产生83个任务,涉及来自主要大学医院的8个不同的秩序,建筑面积为160,000平方米。结果表明,所提出的方法可以在有序的工作常规中存在的四个最常见的任务阶段之间准确区分,实现89.2%的五分。

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