Affiliation:
1. Navsahyadri Education Society's Group of Institutions, Pune, Maharashtra, India
Abstract
Smart Geo-fencing is a to-do-list based location service that allows user to send notification who enter/exit in a geographical region, known as a geo-fence. With the boom of smart phones, location-related services became a best topic and perfect solutions were dispense over the last years. The seniority of app are based on the idea to present location-specific data in case the mobile user asks for it. Now a days, it has become one of the main location relate mobile marketing scheme. Although, the process of developing geo-fences is currently manual, i.e. a shop owner must specify the location and the latitude and longitude of area around it to build the geo-fences. The new user don’t have idea about best grocery, gym, mallet near them with the help of our application they get the required information. We seek to solve this problem by designing a novel end-to-end technology for get notification as per to-do-list maintain by user to design a location based smart geo-fences. The geo-fence techniques tries to get contiguous notification of locations.
Reference9 articles.
1. Y. Tu, L. Chen, M. Lv, Y. Ye, W. Huang, and G. Chen, “iReminder: An Intuitive Location-Based Reminder That Knows Where You Are Going,” Int. Journal of Human-Computer Interaction, vol. 29, no. 12, pp. 838–850, 2013.
2. A. Garg, S. Choudhary, P. Bajaj, S. Agrawal, A. Kedia, and S. Agrawal, “Smart Geo-fencing with Location Sensitive Product Affinity,” in Proc. of the 25th ACM SIGSPATIAL Int. Conf. on Advances in Geographic Information Systems, ser. SIGSPATIAL’17. New York, NY, USA: ACM, 2017, pp. 39:1–39:10.
3. U. Bareth, A. K¨upper, and B. Freese, “Geofencing and Background Tracking - The Next Features in LBS,” in Proc. of the 41th Annual Conf. of the Gesellschaftf¨urInformatike.V. (INFORMATIK 2011), vol. 192. Berlin, Germany: K¨ollenDruck + Verlag GmbH, Oct 2011.
4. Y. Qu and J. Zhang, “Trade Area Analysis Using User Generated Mobile Location Data,” in Proc. of the 22nd Int. Conf. on World Wide Web, ser. WWW ’13. New York, NY, USA: ACM, 2013, pp. 1053–1064.
5. Y. Wang and M. A. P´erez-Qui˜nones, “Beyond ”Geofencing”: Specifying Location in Location-Based Reminder Applications,” in Proc. of the 33rd Annual ACM Conf. on Human Factors in Computing Systems (CHI), Extended Abstracts, 2015, pp. 1767–1772.