the Singapore, where the male participants are spread
evenly.
Lastly, non working female and working male are
most active categories compared to working female
and non working male participants. It is hard to de-
termine what is the main factor that segregate the be-
havior of male and female according to their working
type. One things can be studied in our future works
maybe can correlates their age and their hobby to de-
termine the actual factor of separation.
6 CONCLUSIONS
In conclusion, this paper introduces an approach to
identify ROI and POI where elderly in Singapore pre-
fer to visit and spend their time. Using smartphone
based mobile application, it is possible to collect de-
tailed information with quantitative measurement.
In future, our intention is to identify the trans-
portation mode (e.g. walking, taking bus, taking train)
of the users, and profile each user by creating a user
mobility profile. The multi-sensor data collected from
smartphones make it possible to implement sensor fu-
sion techniques to determine high level information
about user behavior.
ACKNOWLEDGMENTS
Authors would like to express their sincere gratitude
to all the participants in the study who allowed us to
collect their location information. We would like to
thank everyone who spared their time to help us in
the process of elderly recruitment. This research is
supported by the Lee Kuan Yew Centre for Innova-
tive Cities under Lee Li Ming Programme in Aging
Urbanism.
REFERENCES
Arab, F., Malik, Y., and Abdulrazak, B. (2013). Evalu-
ation of phonage: an adapted smartphone interface
for elderly people. In IFIP Conference on Human-
Computer Interaction, pages 547–554. Springer.
Aurenhammer, F. (1991). Voronoi diagrams a survey of a
fundamental geometric data structure. ACM Comput-
ing Surveys (CSUR), 23(3):345–405.
Capella, L. M. and Greco, A. J. (1987). Information sources
of elderly for vacation decisions. Annals of Tourism
Research, 14(1):148–151.
Department of Statistics, S. (2016). In Statistics Singapore
- Resident Old-Age Support Ratio. Sing Stat.
Fahim, M., Fatima, I., Lee, S., and Lee, Y.-K. (2012). Daily
life activity tracking application for smart homes us-
ing android smartphone. In Advanced Communication
Technology (ICACT), 2012 14th International Confer-
ence on, pages 241–245. IEEE.
Ghiani, G., Manca, M., Patern
`
o, F., and Santoro, C. (2013).
Towards an architecture supporting social, adaptive
and persuasive services for active elderly. In CASFE,
pages 36–41.
Helal, S., Winkler, B., Lee, C., Kaddoura, Y., Ran, L.,
Giraldo, C., Kuchibhotla, S., and Mann, W. (2003).
Enabling location-aware pervasive computing appli-
cations for the elderly. In Pervasive Computing and
Communications, 2003.(PerCom 2003). Proceedings
of the First IEEE International Conference on, pages
531–536. IEEE.
Hiyama, A., Nagai, Y., Hirose, M., Kobayashi, M., and
Takagi, H. (2013). Question first: Passive interaction
model for gathering experience and knowledge from
the elderly. In Pervasive Computing and Communica-
tions Workshops (PERCOM Workshops), 2013 IEEE
International Conference on, pages 151–156. IEEE.
Kim, S.-C., Jeong, Y.-S., and Park, S.-O. (2013). Rfid-based
indoor location tracking to ensure the safety of the el-
derly in smart home environments. Personal and ubiq-
uitous computing, 17(8):1699–1707.
Lau, B. P. L., Hasala, M. S., Viswanath, S. K.,
Thirunavukarasu, B., Yuen, C., Yuen, B., and Nayak,
R. (2017). Extracting point of interest and classifying
environment for low sampling crowd sensing smart-
phone sensor data. CoRR, abs/1701.03379.
Liu, R., Huski
´
c, G., and Zell, A. (2015). On tracking dy-
namic objects with long range passive uhf rfid using a
mobile robot. Int. J. Distrib. Sen. Netw., 2015.
Mirri, S., Prandi, C., Salomoni, P., Callegati, F., and Campi,
A. (2014). On combining crowdsourcing, sensing
and open data for an accessible smart city. In 2014
Eighth International Conference on Next Generation
Mobile Apps, Services and Technologies, pages 294–
299. IEEE.
Pang, N., Zhang, X., Vu, S., and Foo, S. (2014). Smart-
phone use by older adults in singapore. Gerontech-
nology, 13(2):270.
SUTDDev (2015). In City - Location tracking application.
Google Play.
Viswanath, S. K., Yuen, C., Ku, X., and Liu, X. (2014).
Smart tourist-passive mobility tracking through mo-
bile application. In International Internet of Things
Summit, pages 183–191. Springer.
Yassin, A., Nasser, Y., Awad, M., Al-Dubai, A., Liu, R.,
Yuen, C., Raulefs, R., and Aboutanios, E. (2017). Re-
cent advances in indoor localization: A survey on the-
oretical approaches and applications. IEEE Commu-
nications Surveys Tutorials, PP(99):1–1.
SMARTGREENS 2017 - 6th International Conference on Smart Cities and Green ICT Systems
66