Temporal Outlier Detection in Vehicle Traffic Data
Outlier detection in vehicle traffic data is a practical
problem that has gained traction lately due to an increasing
capability to track moving vehicles in city roads. In contrast
to other applications, this particular domain includes a very
dynamic dimension: time. Many existing algorithms have studied
the problem of outlier detection at a single instant in time.
This study proposes a method for detecting temporal outliers
with an emphasis on historical similarity trends between data
points. Outliers are calculated from drastic changes in the trends.
Experiments with real world traffic data show that this approach
is effective and efficient.
Date: March 02, 2009
Book Title: Int. Conf. on Data Engineering (ICDE'09)
Type: InProceedings
Edition: Proc. 2009
Address: Shanghai, China
Downloads: 180
Has 1 soft copy
remote linkBibtex
@InProceedings{Temporal_Outlier_Detection_in_Vehicle_Tr,
author = "Xiaolei Li and Zhenhui Li and Jiawei Han and Jae-Gil Lee",
title = "{Temporal Outlier Detection in Vehicle Traffic Data}",
month = "March",
year = "2009",
edition = "Proc. 2009",
address = ", Shanghai, China",
booktitle = "Int. Conf. on Data Engineering (ICDE'09)",
}