使用复杂的多模态身体传感器系统进行活动定位

G. Ogris, T. Stiefmeier, P. Lukowicz, G. Tröster
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引用次数: 46

摘要

本文描述了一种使用多模态、身体传感器系统进行现实任务跟踪的方法。我们研究的具体例子是汽车生产中的质量检验。该任务由多达20个活动类组成,例如检查底盘部件之间的间隙,打开和关闭引擎盖和行李箱,移动驾驶员座位,转动方向盘。其中大多数涉及微妙和短暂的动作,并且在执行方式上具有高度的可变性。尽管如此,为了在连续的数据流中发现这些动作,我们使用了一个由7个运动传感器组成的可穿戴系统,16个力感电阻(FSR)用于下臂肌肉监测,4个超宽带(UWB)标签用于跟踪用户位置。我们提出了一种识别方法,该方法分别处理每个活动类,然后在最后的推理步骤中合并结果。这允许我们为每个活动单独微调系统参数。这也意味着系统可以很容易地扩展以适应进一步的活动。为了证明我们方法的可行性,我们提出了一项有8名参与者和总共2394项活动的研究结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using a complex multi-modal on-body sensor system for activity spotting
This paper describes an approach to real-life task tracking using a multi-modal, on-body sensor system. The specific example that we study is quality inspection in car production. This task is composed of up to 20 activity classes such as checking gaps between parts of the chassis, opening and closing the hood and trunk, moving the driver's seat, and turning the steering wheel. Most of these involve subtle and short movements and have a high degree of variability in the way they are performed. To nonetheless spot those actions in a continuous data stream we use a wearable system composed of 7 motion sensors, 16 force sensing resistors (FSR) for lower arm muscle monitoring and 4 ultra-wide band (UWB) tags for tracking user position. We propose a recognition approach that deals separately with each activity class and then merges the results in a final reasoning step. This allows us to fine-tune the system parameters separately for each activity. It also means that the system can be easily extended to accommodate further activities. To demonstrate the feasibility of our approach we present the results of a study with 8 participants and a total of 2394 activities.
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