使用活动执行序列的加速数据标记方法

Kazuya Murao, T. Terada
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引用次数: 11

摘要

在活动识别领域,已经提出了许多使用加速度计的系统。常用的活动识别方法需要原始数据标记的基础事实来学习模型。为了获得地面信息,佩戴者通过摄像机或手写备忘录记录下他/她在数据记录过程中的活动。然而,参考视频需要很长时间,做备忘录会打断自然活动。我们提出了一种使用活动执行序列进行活动识别的标记方法。执行序列包括按执行顺序进行的活动,不包括时间戳,并且是根据他/她的记忆制作的。我们提出的方法将未标记的数据划分为段和簇,并为每个段分配一个簇,然后根据簇与用户记录的活动的最佳匹配分配分配标签。对于包含7种活动的数据,该方法的精密度为0.812。我们还证实,使用我们的建议标记的训练数据的识别准确率为0.871,与ground truth相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Labeling method for acceleration data using an execution sequence of activities
In the area of activity recognition, many systems using accelerometers have been proposed. Common method for activity recognition requires raw data labeled with ground truth to learn the model. To obtain ground truth, a wearer records his/her activities during data logging through video camera or handwritten memo. However, referring a video takes long time and taking a memo interrupts natural activity. We propose a labeling method for activity recognition using an execution sequence of activities. The execution sequence includes activities in performed order, does not include time stamps, and is made based on his/her memory. Our proposed method partitions and classifies unlabeled data into segments and clusters, and assigns a cluster to each segment, then assign labels according to the best-matching assignment of clusters with the user-recorded activities. The proposed method gave a precision of 0.812 for data including seven kinds of activities. We also confirmed that recognition accuracy with training data labeled with our proposal gave a recall of 0.871, which is equivalent to that with ground truth.
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