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Thinking Fast and Slow:An Approach to Energy-Efficient Human Activity Recognition on Mobile Devices

机译:快速思考和慢思考:一种在移动设备上进行节能人类活动识别的方法

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摘要

According to Daniel Kahneman, there are two systems that drive the human decision-making process: The intuitive system that performs the fast thinking, and the deliberative system that does more logical and slower thinking. Inspired by this model, we propose a framework for implementing human activity recognition on mobile devices. In this area, the mobile app is usually always on and the general challenge is how to balance accuracy and energy consumption. However, among existing approaches, those based on cellular IDs consume little power but are less accurate; those based on GPS/Wi-Fi sampling are accurate often at the costs of battery drainage; moreover, previous methods in general do not improve over time. To address these challenges, our framework consists of two modes: In the deliberation mode, the system learns cell ID patterns that are trained by existing GPS-/Wi-Fi-based methods; in the intuition mode, only the learned cell ID patterns are used for activity recognition, which is both accurate and energy efficient; system parameters are learned to control the transition from deliberation to intuition, when sufficient confidence is gained, and the transition from intuition to deliberation, when more training is needed. For the scope of this paper, we first elaborate our framework in a subproblem in activity recognition, trip detection, which recognizes significant places and trips between them. For evaluation, we collected real-life traces of six participants over five months. Our experiments demonstrated consistent results across different participants in terms of accuracy and energy efficiency and, more importantly, its fast improvement on energy efficiency over time due to regularities in human daily activities.
机译:根据丹尼尔·卡尼曼(Daniel Kahneman)的观点,有两种系统可以驱动人类的决策过程:执行快速思考的直观系统,以及进行更合理,更慢思考的审议系统。受此模型的启发,我们提出了一个在移动设备上实现人类活动识别的框架。在这一领域,移动应用程序通常始终处于打开状态,而普遍的挑战是如何在准确性和能耗之间取得平衡。但是,在现有方法中,那些基于蜂窝ID的方法消耗的功率很少,但准确性较低。基于GPS / Wi-Fi采样的数据通常是准确的,但要消耗电池电量;此外,以前的方法通常不会随着时间的推移而改善。为了应对这些挑战,我们的框架包括两种模式:在审议模式下,系统学习通过现有的基于GPS / Wi-Fi的方法训练的小区ID模式;在直觉模式下,仅将学习到的小区ID模式用于活动识别,既准确又节能。当获得足够的置信度时,学习系统参数以控制从思考到直觉的过渡,而当需要更多训练时,可以控制从直觉到思考的过渡。对于本文的范围,我们首先在活动识别,行程检测的子问题中详细阐述我们的框架,该子问题可识别它们之间的重要位置和行程。为了进行评估,我们在五个月内收集了六名参与者的真实生活轨迹。我们的实验证明了不同参与者在准确性和能源效率方面的一致结果,更重要的是,由于人类日常活动的规律性,其随着时间的推移在能源效率方面的快速提高。

著录项

  • 来源
    《AI Magazine》 |2013年第2期|48-66|共19页
  • 作者

    Yifei Jiang; Du Li; Qin Lv;

  • 作者单位

    Department of Computer Science at the University of Colorado, Boulder;

    Department of Computer Science at the University of Colorado, Boulder;

    Department of Computer Science at the University of Colorado, Boulder;

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  • 正文语种 eng
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