Affiliation:
1. SINTEF Digital, Oslo, Norway
2. University of the West of England, United Kingdom
3. HVL, Bergen, Norway
Abstract
This article introduces two new problems related to trajectory outlier detection: (1)
group trajectory outlier (GTO) detection
and (2)
deviation point detection
for both individual and group of trajectory outliers. Five algorithms are proposed for the first problem by adapting
DBSCAN
,
k nearest neighbors (kNN)
, and
feature selection (FS)
.
DBSCAN-GTO
first applies
DBSCAN
to derive the
micro clusters
, which are considered as potential candidates. A pruning strategy based on density computation measure is then suggested to find the group of trajectory outliers.
kNN-GTO
recursively derives the trajectory candidates from the individual trajectory outliers and prunes them based on their density. The overall process is repeated for all individual trajectory outliers. FS-GTO considers the set of individual trajectory outliers as the set of all features, while the FS process is used to retrieve the group of trajectory outliers. The proposed algorithms are improved by incorporating ensemble learning and high-performance computing during the detection process. Moreover, we propose a general two-phase-based algorithm for detecting the deviation points, as well as a version for graphic processing units implementation using sliding windows. Experiments on a real trajectory dataset have been carried out to demonstrate the performance of the proposed approaches. The results show that they can efficiently identify useful patterns represented by group of trajectory outliers, deviation points, and that they outperform the baseline group detection algorithms.
Publisher
Association for Computing Machinery (ACM)
Cited by
41 articles.
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