自由生活中的多传感器身体活动识别。

Katherine Ellis, Suneeta Godbole, Jacqueline Kerr, Gert Lanckriet
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引用次数: 43

摘要

自由生活人群的身体活动监测在公共卫生研究、减肥干预、情境感知推荐系统和辅助技术方面有许多应用。我们提出了一个身体活动识别系统,该系统是从40名女性的自由生活数据集中学习的,这些女性在7天内佩戴了多个传感器。多级分类系统首先为每个传感器学习低级码本表示,并使用随机森林分类器为每个活动类生成分钟级概率。然后,更高级的HMM层学习过渡模式和活动持续时间,以平滑分钟级的预测。[公式:见正文]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multi-sensor physical activity recognition in free-living.

Multi-sensor physical activity recognition in free-living.

Multi-sensor physical activity recognition in free-living.

Multi-sensor physical activity recognition in free-living.

Physical activity monitoring in free-living populations has many applications for public health research, weight-loss interventions, context-aware recommendation systems and assistive technologies. We present a system for physical activity recognition that is learned from a free-living dataset of 40 women who wore multiple sensors for seven days. The multi-level classification system first learns low-level codebook representations for each sensor and uses a random forest classifier to produce minute-level probabilities for each activity class. Then a higher-level HMM layer learns patterns of transitions and durations of activities over time to smooth the minute-level predictions. [Formula: see text].

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