Giannotti F., Nanni M., Pedreschi D., Pinelli F.
Trajectory patterns Spatio-temporal data mining data mining H.2.8 Database Applications
The increasing pervasiveness of location-acquisition technologies (GPS, GSM networks, etc.) is leading to the collection of large spatio-temporal datasets and to the opportunity of discovering usable knowledge about movement behaviour, which fosters novel applications and services. In this paper, we move towards this direction and develop an extension of the sequential pattern mining paradigm that analyzes the trajectories of moving objects. We introduce trajectory patterns as concise descriptions of frequent behaviours, in terms of both space (i.e., the regions of space visited during movements) and time (i.e., the duration of movements). In this setting, we provide a general formal statement of the novel mining problem and then study several different instantiations of different complexity. The various approaches are then empirically evaluated over real data and synthetic benchmarks, comparing their strengths and weaknesses.
Source: KDD-2007: 13th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp. 330–339, San Jose, California, USA, August 12-15, 2007
@inproceedings{oai:it.cnr:prodotti:182275, title = {Trajectory pattern mining}, author = {Giannotti F. and Nanni M. and Pedreschi D. and Pinelli F.}, doi = {10.1145/1281192.1281230}, booktitle = {KDD-2007: 13th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp. 330–339, San Jose, California, USA, August 12-15, 2007}, year = {2007} }
A Novel Approach to Mining Travel Sequences Using Collections of Geotagged Photos
Automatic Discovery of Tactics in Spatio-Temporal Soccer Match Data
Automatic Maritime Traffic Synthetic Route: A Framework for Route Prediction
Efficient Detection of Emergency Event from Moving Object Data Streams
GMove
MinHash hierarchy for privacy preserving trajectory sensing and query
MinUS: Mining User Similarity with Trajectory Patterns
Modeling Herds and Their Evolvements from Trajectory Data
PaRE
Point of interest to region of interest conversion
RTMatch: Real-Time Location Prediction Based on Trajectory Pattern Matching
Recognition of Periodic Behavioral Patterns from Streaming Mobility Data
Spatio-temporal clustering
Trajectory Voting and Classification Based on Spatiotemporal Similarity in Moving Object Databases
Trajectory-based social circle inference