ABSTRACT
Real-time information about vacant parking spaces is of paramount value in urban environments. One promising approach to obtaining such information is participatory sensing, i.e. detecting parking/unparking activities using smartphones. This paper introduces and describes multiple indicators, each of which provides an inconclusive clue for a parking or an unparking activity. As a result, the paper proposes a probabilistic fusion method which combines the output from different indicators to make more reliable detections. The proposed fusion method can be applied to inferring other similar high-level human activities that involve multiple indicators which output features asynchronously, and that involve concerns about power consumption. The proposed indicators and the fusion method are implemented as an Android App called UPDetector. Via experiments, we show that our App is both effective and energy-efficient in detecting parking/unparking activities.
- ActivityRecognitionClient | Android Developers: http://developer.android.com/reference/com/google/android/gms/location/ActivityRecognitionClient.html.Google Scholar
- Chu, D., Lane, N. D., Lai, T. T.-T., Pang, C., Meng, X., Guo, Q., Li, F. and Zhao, F. 2011. Balancing energy, latency and accuracy for mobile sensor data classification. Proceedings of the 9th ACM Conference on Embedded Networked Sensor Systems - SenSys '11. (2011), 54. Google ScholarDigital Library
- Dernbach, S., Das, B., Krishnan, N. C., Thomas, B. L. and Cook, D. J. 2012. Simple and Complex Activity Recognition through Smart Phones. 2012 Eighth International Conference on Intelligent Environments. (Jun. 2012), 214--221. Google ScholarDigital Library
- Haichen Shen, Aruna Balasubramanian, Eric Yuan, Anthony LaMarca, D. W. Improving Power Efficiency Using Sensor Hubs Without Re-Coding Mobile Apps.Google Scholar
- Kwapisz, J., Weiss, G. and Moore, S. 2011. Activity recognition using cell phone accelerometers. ACM SIGKDD Explorations Newsletter. 12, 2 (2011), 74--82. Google ScholarDigital Library
- Masnadi-Shirazi, H. and Vasconcelos, N. 2011. Cost-sensitive boosting. IEEE transactions on pattern analysis and machine intelligence. 33, 2 (Feb. 2011), 294--309. Google ScholarDigital Library
- Mathur, S. and Jin, T. 2010. Parknet: drive-by sensing of road-side parking statistics. Proceedings of the 8th international conference on Mobile systems, applications, and services. (2010). Google ScholarDigital Library
- McEnnis, D., McKay, C., Fujinaga, I. and Depalle, P. 2006. jAudio: Additions and Improvements. ISMIR. (2006).Google Scholar
- Mun, M., Estrin, D., Burke, J. and Hansen, M. 2008. Parsimonious mobility classification using GSM and WiFi traces. Proceedings of the 5th Workshop on Embedded Networked Sensors. (2008), 1--5.Google Scholar
- Nawaz, S., Efstratiou, C. and Mascolo, C. 2013. ParkSense: A Smartphone Based Sensing System For On-Street Parking. In Proceedings of the 19th ACM International Conference on Mobile Computing and Networking (MOBICOM 2013). (2013). Google ScholarDigital Library
- Parkmobile: http://us.parkmobile.com/.Google Scholar
- PayByPhone.: http://www.paybyphone.com/how-it-works/.Google Scholar
- Rababaah, A. 2011. Event Detection, Classification And Fusion For Non-Stationary Vehicular Acoustic Signals. International Journal of Science of Informatics. 1, 1 (2011), 9--20.Google Scholar
- Ravi, N., Dandekar, N., Mysore, P. and Littman, M. 2005. Activity recognition from accelerometer data. AAAI. (2005). Google ScholarDigital Library
- Reddy, S., Mun, M., Burke, J. and Estrin, D. 2010. Using mobile phones to determine transportation modes. ACM Transactions on Sensor Networks (TOSN). 6, 2 (Feb. 2010), 1--27. Google ScholarDigital Library
- Shoup, D. 2005. The High Cost of Free Parking. American Planning Association.Google Scholar
- Skyhook Inc.: http://www.skyhookwireless.com/.Google Scholar
- Stenneth, L., Wolfson, O., Xu, B. and Yu, P. S. 2012. PhonePark: Street Parking Using Mobile Phones. 2012 IEEE 13th International Conference on Mobile Data Management. (Jul. 2012), 278--279. Google ScholarDigital Library
- Stenneth, L., Wolfson, O., Yu, P. S., and Xu, B., 2011. Transportation Mode Detection using Mobile Phones and GIS Information. Proceedings of the 19th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems. (2011). Google ScholarDigital Library
- Streetline, Inc.: www.streetline.com.Google Scholar
- Tulyakov, S. and Jaeger, S. 2008. Review of classifier combination methods. Machine Learning in Document Analysis and Recognition. Figure 1 (2008), 1--26.Google Scholar
- Wang, Y., Lin, J. and Annavaram, M. 2009. A framework of energy efficient mobile sensing for automatic user state recognition. Proceedings of the 7th international conference on Mobile systems, applications, and services. (2009). Google ScholarDigital Library
- Xu, B., Wolfson, O., Yang, J., Stenneth, L, Yu, P. S., and Nelson, P. Real-time Street Parking Availability Estimation. MDM 13: Proceedings of the 14th International Conference on Mobile Data Management. Google ScholarDigital Library
- Zhang, L., Tiwana, B., Qian, Z. and Wang, Z. 2010. Accurate online power estimation and automatic battery behavior based power model generation for smartphones. Proceedings of the eighth IEEE/ACM/IFIP international conference on Hardware/software codesign and system synthesis. (2010). Google ScholarDigital Library
- Zheng, Y., Liu, L., Wang, L. and Xie, X. 2008. Learning transportation mode from raw gps data for geographic applications on the web. Proceedings of the 17th international conference on World Wide Web. 49 (2008). Google ScholarDigital Library
Index Terms
- UPDetector: sensing parking/unparking activities using smartphones
Recommendations
Smartphone-based monitoring system for activities of daily living for elderly people and their relatives etc.
UbiComp '13 Adjunct: Proceedings of the 2013 ACM conference on Pervasive and ubiquitous computing adjunct publicationWe developed a smartphone-based monitoring system to allay the anxiety of elderly people and that of their relatives, friends and caregivers by unobtrusively monitoring an elderly person's activities of daily living. A smartphone of the elderly person ...
Location-independent fall detection with smartphone
PETRA '13: Proceedings of the 6th International Conference on PErvasive Technologies Related to Assistive EnvironmentsDue to demographic changes in developed industrial countries and a better medical care system, the number of elderly people who still live in their home environment is rapidly growing because there they feel more comfortable and independent as in a ...
Sensing vehicle dynamics for determining driver phone use
MobiSys '13: Proceeding of the 11th annual international conference on Mobile systems, applications, and servicesThis paper utilizes smartphone sensing of vehicle dynamics to determine driver phone use, which can facilitate many traffic safety applications. Our system uses embedded sensors in smartphones, i.e., accelerometers and gyroscopes, to capture differences ...
Comments