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Daily life event segmentation for lifestyle evaluation based on multi-sensor data recorded by a wearable device

机译:基于可穿戴设备记录的多传感器数据的日常生活事件细分,用于生活方式评估

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In order to evaluate people's lifestyle for health maintenance, this paper presents a segmentation method based on multi-sensor data recorded by a wearable computer called eButton. This device is capable of recording more than ten hours of data continuously each day in multimedia forms. Automatic processing of the recorded data is a significant task. We have developed a two-step summarization method to segment large datasets automatically. At the first step, motion sensor signals are utilized to obtain candidate boundaries between different daily activities in the data. Then, visual features are extracted from images to determine final activity boundaries. It was found that some simple signal measures such as the combination of a standard deviation measure of the gyroscope sensor data at the first step and an image HSV histogram feature at the second step produces satisfactory results in automatic daily life event segmentation. This finding was verified by our experimental results.
机译:为了评估人们的生活方式以维护健康,本文提出了一种基于可穿戴计算机eButton记录的多传感器数据的分割方法。该设备每天能够以多媒体形式连续记录十多个小时的数据。记录数据的自动处理是一项重要的任务。我们开发了一种两步汇总方法来自动分割大型数据集。第一步,利用运动传感器信号获取数据中不同日常活动之间的候选边界。然后,从图像中提取视觉特征以确定最终活动边界。已经发现,一些简单的信号量度,例如第一步的陀螺仪传感器数据的标准偏差量度和第二步的图像HSV直方图特征的组合,在自动日常生活事件分割中产生了令人满意的结果。我们的实验结果证实了这一发现。

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