Finding Dense Locations in Indoor Tracking Data

Finding the dense locations in large indoor spaces is very useful for getting overloaded locations, security, crowd management, indoor navigation, and guidance. Indoor tracking data can be very large and are not readily available for finding dense locations. This paper presents a graph-based model for semi-constrained indoor movement, and then uses this to map raw tracking records into mapping records representing object entry and exit times in particular locations. Then, an efficient indexing structure, the Dense Location Time Index (DLT-Index) is proposed for indexing the time intervals of the mapping table, along with associated construction, query processing, and pruning techniques. The DLT-Index supports very efficient aggregate point queries, interval queries, and dense location queries. A comprehensive experimental study with real data shows that the proposed techniques can efficiently find dense locations in large amounts of indoor tracking data.

[1]  Yufei Tao,et al.  MV3R-Tree: A Spatio-Temporal Access Method for Timestamp and Interval Queries , 2001, VLDB.

[2]  Jae-Gil Lee,et al.  Traffic Density-Based Discovery of Hot Routes in Road Networks , 2007, SSTD.

[3]  Tanvir Ahmed,et al.  Capturing hotspots for constrained indoor movement , 2013, SIGSPATIAL/GIS.

[4]  Panos Kalnis,et al.  Indexing spatio-temporal data warehouses , 2002, Proceedings 18th International Conference on Data Engineering.

[5]  Ramez Elmasri,et al.  The Time Index: An Access Structure for Temporal Data , 1990, VLDB.

[6]  Nieves R. Brisaboa,et al.  The SMO-index: a succinct moving object structure for timestamp and interval queries , 2012, SIGSPATIAL/GIS.

[7]  Hua Lu,et al.  Indexing the Trajectories of Moving Objects in Symbolic Indoor Space , 2009, SSTD.

[8]  Hua Lu,et al.  Graph Model Based Indoor Tracking , 2009, 2009 Tenth International Conference on Mobile Data Management: Systems, Services and Middleware.

[9]  Tanvir Ahmed,et al.  A Data Warehouse Solution for Analyzing RFID-Based Baggage Tracking Data , 2013, 2013 IEEE 14th International Conference on Mobile Data Management.

[10]  Jeffrey Considine,et al.  Spatio-temporal aggregation using sketches , 2004, Proceedings. 20th International Conference on Data Engineering.

[11]  Beng Chin Ooi,et al.  Effective Density Queries on ContinuouslyMoving Objects , 2006, 22nd International Conference on Data Engineering (ICDE'06).