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Using Intelligent Personal Annotations to Improve Human Activity Recognition for Movements in Natural Environments

机译:使用智能个人注释来改善自然环境中运动的人力活动认可

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摘要

Personal tracking algorithms for health monitoring are critical for understanding an individual's life-style and personal choices in natural environments (NE). In order to train such tracking algorithms in NE, however, annotated data is needed, particularly when tracking a variety of activities of daily living. These algorithms are often trained in laboratory settings, with expectations that they will perform equally well in NE, which is often not the case; they must be trained on annotated data collected in NE and wearable computers provide opportunities to collect such data, though the process is burdensome. Therefore, we propose an intelligent scoring algorithm that limits the number of user annotation requests through the confidence of predictions generated by the tracking algorithm and automatically annotating data with high confidence. We enhance our scoring algorithm by providing improvements in our tracking algorithm by obtaining context data from nearable sensors. Each specific context of a user bounds the set of activities that can likely occur, which in turn improves the tracking algorithm and confidence. Finally, we propose a hierarchical annotation approach, where repeated use allows us to ask for detailed annotations that differentiate fine-grained differences in ways individuals perform activities. We validate our approach in a diet monitoring case study. We vary the number of annotations requested per day to evaluate model accuracy; we improve accuracy in NE by 8% when restricting requests to 20 per day and improve F1-score of activities by 11% with hierarchical annotations, while discussing implementation, accuracy, and power consumption in real-time use.
机译:用于健康监测的个人跟踪算法对于了解个人的自然环境(NE)中的个人的生活方式和个人选择至关重要。然而,为了训练NE中的这种跟踪算法,需要注释数据,特别是在跟踪日常生活的各种活动时。这些算法经常在实验室设置中培训,期望它们在NE中将在NE中表现得同样良好,这通常不是这种情况;它们必须接受培训,用于在NE和可穿戴计算机中收集的注释数据提供收集这些数据的机会,尽管该过程是繁重的。因此,我们提出了一种智能评分算法,其通过跟踪算法生成的预测和自动注释数据以高置信度自动注释数据来限制用户注释请求的数量。我们通过从附近传感器获取上下文数据来提高我们的跟踪算法的改进来增强我们的评分算法。用户的每个特定上下文都会绑定可能发生的一组活动,这又改善了跟踪算法和信心。最后,我们提出了一种分层注释方法,其中重复使用允许我们询问详细的注释,以便以个人执行活动的方式区分细粒度差异。我们在饮食监测案例研究中验证了我们的方法。我们改变每天要求的注释数量以评估模型准确性;当将请求限制为每天20时,我们提高NE的准确性,并通过分层注释将F1分数提高11%,同时讨论实时使用中的实施,准确性和功耗。

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