Conclusion and Future Work
4.2 Future Work
For future research, we may use a profile as the signature of corresponding type of moving objects for other mining tasks. With profiles of different trajectory data sets, various typical moving behaviors can be used to identify the object type. And we may use the information collected in trajectory data warehouse to build typical sketches of object moving for other pattern based data mining tasks. The template patterns can be used for event analysis and real-time abnormal condition detection.
And the routinely series trends can be used in moving style change analysis and future moving behavior predictions. Moreover, we may link the moving patterns with many other spatial, temporal, or event databases, and extend the applications of data warehouse. For instance, we can link the patterns to real world road status or weather conditions, and find the related influences in moving behaviors. Analysis may also be further focused on area with interesting behaviors revealed by the moving patterns, and provide location based services or other applications.
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