期刊文献+

Smart Care: Energy-Efficient Long-Term Physical Activity Tracking Using Smartphones 被引量:2

Smart Care: Energy-Efficient Long-Term Physical Activity Tracking Using Smartphones
原文传递
导出
摘要 Lack of physical activity is becoming a killer of our healthy life. As a solution for this negative impact, we propose SmartCare to help users to set up a healthy physical activity habit. SmartCare can monitor a user's activities over a long time, and then provide activity quality assessment and suggestion. SmartCare consists of three parts, activity recognition, energy saving, and health feedback. Activity recognition can recognize nine kinds of daily activities. A hybrid classifier that uses less power and memory with satisfactory accuracy was designed and implemented by utilizing the periodicity of target activity. In addition, a learning-based energy saver was introduced to reduce energy consumption by adjusting sampling rates and the set of features adaptively. Based on the type and duration of the activity recorded, health feedback in terms of the calorie burned was given. The system could provide quantitative activity quality assessment and recommend future physical activity plans. Through extensive real-life testing, the system is shown to achieve an average recognition accuracy of 98.0% with a minimized energy expenditure. Lack of physical activity is becoming a killer of our healthy life. As a solution for this negative impact, we propose SmartCare to help users to set up a healthy physical activity habit. SmartCare can monitor a user's activities over a long time, and then provide activity quality assessment and suggestion. SmartCare consists of three parts, activity recognition, energy saving, and health feedback. Activity recognition can recognize nine kinds of daily activities. A hybrid classifier that uses less power and memory with satisfactory accuracy was designed and implemented by utilizing the periodicity of target activity. In addition, a learning-based energy saver was introduced to reduce energy consumption by adjusting sampling rates and the set of features adaptively. Based on the type and duration of the activity recorded, health feedback in terms of the calorie burned was given. The system could provide quantitative activity quality assessment and recommend future physical activity plans. Through extensive real-life testing, the system is shown to achieve an average recognition accuracy of 98.0% with a minimized energy expenditure.
出处 《Tsinghua Science and Technology》 SCIE EI CAS CSCD 2015年第4期348-363,共16页 清华大学学报(自然科学版(英文版)
基金 partially supported by the National Natural Science Foundation of China (Nos. 61190110, 61272456, and 61472312) the open fund ITDU14004/KX142600011 supported by the overall innovation project of Shaanxi Province Science and Technology Plan (No. 2012KTZD02-03-03) the Fundamental Research Funds for the Central Universities (Nos. JB151002, K5051323005, and BDY041409)
关键词 physical activity tracking hybrid classifier health feedback physical activity tracking hybrid classifier health feedback
  • 相关文献

参考文献34

  • 1N. D. Lane, M. Lin, M. Mohammod, X. Yang, H. Lu, G. Cardone, S. Ali, A. Doryab, E. Berke, A. T Campbell, et al., Bewell: Sensing sleep, physical activities and social interactions to promote wellbeing, Mobile Networks and Applications, vol. 19, no. 3, pp. 345-359,2014.
  • 2J. Gummeson, B. Priyantha, and J. Liu, An energy harvesting wearable ring platform for gestureinput on surfaces, in Proceedings of the ]21 h Annual International Conference on Mobile Systems, Applications, and Services, ACM, 2014, pp. 162-175.
  • 3A. Parate, M.-C. Chiu, C. Chadowitz, D. Ganesan, and E. Kalogerakis, Risq: Recognizing smoking gestures with inertial sensors on a wristband, in Proceedings of the 12th Annual International Conference on Mobile Systems, Applications, and Services, ACM, 2014, pp. 149-161.
  • 4M. Han, J. H. Bang, C. Nugent, S. McClean, and S. Lee, A lightweight hierarchical activity recognition framework using smartphone sensors, Sensors, vol. 14, no. 9, pp. 16181-16195,2014.
  • 5M. Ermes, J. Parkka, J. Mantyjarvi, and 1. Korhonen, Detection of daily activities and sports with wearable sensors in controlled and uncontrolled conditions, IEEE Transactions on Information Technology in Biomedicine, vol. 12, no. I, pp. 20-26, 2008.
  • 6J. Suutala, S. Pirttikangas, and J. Roning, Discriminative temporal smoothing for activity recognition from wearable sensors, in Ubiquitous Computing Systems. Springer, 2007,pp.182-195.
  • 7K. Ha, Z. Chen, W. Hu, W. Richter, P. Pillai, and M. Satyanarayanan, Towards wearable cogmtIve assistance, in Proceedings of the 12th Annual International Conference on Mobile Systems, Applications, and Services, ACM, 2014, pp. 68-81.
  • 8AppleWatch, httpv/www.apple.com/watch/, 2015.
  • 9Eric, fitbit, http://www.fitbit.coml. 2015.
  • 10Z. Yan, V. Subbaraju, D. Chakraborty, A. Misra, and K. Aberer, Energy-efficient continuous activity recognition on mobile phones: An activity-adaptive approach, in 16th International Symposium on Wearable Computers (ISWC), IEEE, 2012, pp. 17-24.

同被引文献10

引证文献2

二级引证文献9

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部