Energy-Efficient Continuous Activity Recognition on Mobile Phones: An Activity-Adaptive Approach

Zhixian Yan, Vigneshwaran Subbaraju, D. Chakraborty, Archan Misra, K. Aberer
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引用次数: 275

Abstract

Power consumption on mobile phones is a painful obstacle towards adoption of continuous sensing driven applications, e.g., continuously inferring individual's locomotive activities (such as 'sit', 'stand' or 'walk') using the embedded accelerometer sensor. To reduce the energy overhead of such continuous activity sensing, we first investigate how the choice of accelerometer sampling frequency & classification features affects, separately for each activity, the "energy overhead" vs. "classification accuracy" tradeoff. We find that such tradeoff is activity specific. Based on this finding, we introduce an activity-sensitive strategy (dubbed "A3R" - Adaptive Accelerometer-based Activity Recognition) for continuous activity recognition, where the choice of both the accelerometer sampling frequency and the classification features are adapted in real-time, as an individual performs daily lifestyle-based activities. We evaluate the performance of A3R using longitudinal, multi-day observations of continuous activity traces. We also implement A3R for the Android platform and carry out evaluation of energy savings. We show that our strategy can achieve an energy savings of 50% under ideal conditions. For users running the A3R application on their Android phones, we achieve an overall energy savings of 20-25%.
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基于移动电话的节能连续活动识别:一种活动自适应方法
移动电话的功耗是采用连续传感驱动应用的一个痛苦障碍,例如,使用嵌入式加速度计传感器连续推断个人的机车活动(如“坐”、“站”或“走”)。为了减少这种连续活动感知的能量开销,我们首先研究加速度计采样频率和分类特征的选择如何影响每个活动的“能量开销”vs。“分类准确性”的权衡。我们发现这种权衡是特定于活动的。基于这一发现,我们引入了一种用于连续活动识别的活动敏感策略(称为“A3R”-基于自适应加速度计的活动识别),其中加速度计采样频率和分类特征的选择都是实时调整的,因为个人执行日常生活方式为基础的活动。我们使用连续活动轨迹的纵向、多日观测来评估A3R的性能。我们还对Android平台实施了A3R,并进行了节能评估。我们表明,在理想条件下,我们的策略可以实现50%的节能。对于在Android手机上运行A3R应用程序的用户,我们实现了20-25%的总体节能。
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