Authors
Sunny Consolvo, David W McDonald, Tammy Toscos, Mike Y Chen, Jon Froehlich, Beverly Harrison, Predrag Klasnja, Anthony LaMarca, Louis LeGrand, Ryan Libby, Ian Smith, James A Landay
Publication date
2008/4/6
Book
Proceedings of the SIGCHI conference on human factors in computing systems
Pages
1797-1806
Description
Recent advances in small inexpensive sensors, low-power processing, and activity modeling have enabled applications that use on-body sensing and machine learning to infer people's activities throughout everyday life. To address the growing rate of sedentary lifestyles, we have developed a system, UbiFit Garden, which uses these technologies and a personal, mobile display to encourage physical activity. We conducted a 3-week field trial in which 12 participants used the system and report findings focusing on their experiences with the sensing and activity inference. We discuss key implications for systems that use on-body sensing and activity inference to encourage physical activity.
Total citations
20082009201020112012201320142015201620172018201920202021202220232024234463949112613116714814912486807044458
Scholar articles
S Consolvo, DW McDonald, T Toscos, MY Chen… - Proceedings of the SIGCHI conference on human …, 2008