Motionword:一种基于智能终端和云的活动识别算法

Zhen-Jie Yao, Zhi-Peng Zhang, Junyan Wang, Li-Qun Xu
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引用次数: 1

摘要

识别身体活动的能力,如久坐、开车、骑马、日常活动和有效的训练,对于注重健康的用户来说很有用,可以帮助他们对日常活动进行分类,并制定良好的锻炼计划。传统的活动识别算法需要复杂的计算,不适合在低成本、低功耗硬件平台上开发的可穿戴设备。在本文中,受文本挖掘相关工作的启发,我们设计了一种新的活动识别算法,命名为“Motionword”。在可穿戴设备中,采用轻量级识别算法实时计算预定义的原子事件,并统计这些事件发生的频率,得出数据汇总,然后将数据汇总传输到平台。在平台上,使用智能方法识别并将用户的主要活动分为5类。在由110个用户∗天的真实世界数据组成的数据集上,由10个用户贡献的测试结果表明,识别准确率为95.52%。Motionword算法能够在不增加硬件成本或功耗的情况下获得准确的活动识别结果。
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Motionword: An activity recognition algorithm based on intelligent terminal and cloud
The ability to recognize physical activity, such as sedentary, driving, riding, daily activities and effective training, is useful for health conscious users to catalogue their daily activities and to develop good exercise routines. Conventional activity recognition algorithms require complex calculations, which are not suitable for wearable devices developed on low-cost, low-power hardware platforms. In this paper, inspired by the text mining related work, we design a novel activity recognition algorithm, which is named “Motionword”. In the wearable device proper, a lightweight recognition algorithm is adopted to compute in real-time predefined atomic events, and count the frequency that these events occur, resulting in a data summary, and then the data summary is transmitted to the platform. On the platform, intelligent method is used to identify and categorize the user's main activity into 5 classes. The test results on a dataset composed of 110 user∗day real world data, contributed by 10 users, show that the recognition accuracy is 95.52%. The Motionword algorithm is capable of achieving accurate activity recognition results without additional hardware cost or power consumption.
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