2021
DOI: 10.1049/itr2.12109
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A highly efficient framework for outlier detection in urban traffic flow

Abstract: The outliers in traffic flow represent the anomalies or emergencies in the road. The detection and research of outliers will help to reveal the mechanism of such events. Aiming at the problem of outlier detection in urban traffic flow, this paper innovatively proposes a highly efficient traffic outlier detection framework based on the study of road traffic flow patterns. The main research works are as follows: (1) data pre-processing, the road traffic flow matrix of the roads is calculated based on the collect… Show more

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Cited by 8 publications
(1 citation statement)
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References 40 publications
(66 reference statements)
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“…The framework used the non negative matrix decomposition algorithm to pre-process the data, used the fuzzy C-means clustering algorithm with the optimal K-cluster center to extract the road TF patterns, and used kernel density estimation to fit the probability density of the road TF matrix. The laboratory findings expressed that the mean accuracy and recall of this method were 95% and 96.%, respectively [14]. To better detect unauthorized wireless cameras, experts such as Y. Cheng proposed a lightweight and effective detection mechanism based on smartphones and a human assisted recognition model, which utilized the inherent traffic patterns of wireless camera traffic.…”
Section: Related Workmentioning
confidence: 99%
“…The framework used the non negative matrix decomposition algorithm to pre-process the data, used the fuzzy C-means clustering algorithm with the optimal K-cluster center to extract the road TF patterns, and used kernel density estimation to fit the probability density of the road TF matrix. The laboratory findings expressed that the mean accuracy and recall of this method were 95% and 96.%, respectively [14]. To better detect unauthorized wireless cameras, experts such as Y. Cheng proposed a lightweight and effective detection mechanism based on smartphones and a human assisted recognition model, which utilized the inherent traffic patterns of wireless camera traffic.…”
Section: Related Workmentioning
confidence: 99%