DocumentCode :
3151012
Title :
Spatio-temporal coupled Bayesian Robust Principal Component Analysis for road traffic event detection
Author :
Shiming Yang ; Kalpakis, K. ; Biem, Alain
Author_Institution :
Dept. of Comput. Sci. & Electr. Eng., Univ. of Maryland, Baltimore County, Baltimore, MD, USA
fYear :
2013
fDate :
6-9 Oct. 2013
Firstpage :
392
Lastpage :
398
Abstract :
Road traffic sensors provide us with rich multi-variable datastreams about the current traffic conditions. Occasionally, there are unusual traffic events (such as accidents, jams, severe weather, etc) that disrupt the expected road traffic conditions. Detecting the occurrence of such events in an online and real-time manner is useful to drivers in planning their routes and in the management of the transportation infrastructure. We propose a new method for detecting traffic events that impact road traffic conditions by extending the Bayesian Robust Principal Component Analysis (RPCA) approach. Our method couples multiple traffic datastreams so that they share a certain sparse structure. This sparse structure is used to localize traffic events in space and time. The traffic datastreams are measurements of different physical quantities (e.g. traffic flow, road occupancy) by different nearby sensors. Our proposed method process datastreams in an incremental way with little computational cost, and hence it is suitable to detect events in an online and real-time manner. We experimentally analyze the detection performance of the proposed coupled Bayesian RPCA using real data from loop detectors on the Minnesota I-494. We find that our method significantly improves the detection accuracy when compared with the traditional PCA and non-coupled Bayesian RPCA.
Keywords :
principal component analysis; road traffic control; sensor fusion; time series; Minnesota I-494; RPCA approach; loop detectors; multivariable data streams; road traffic conditions; road traffic event detection; road traffic sensors; route planning; spatio-temporal coupled Bayesian robust principal component analysis; traffic conditions; transportation infrastructure management; Bayes methods; Matrix decomposition; Principal component analysis; Roads; Sensors; Sparse matrices; Vehicles;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Transportation Systems - (ITSC), 2013 16th International IEEE Conference on
Conference_Location :
The Hague
Type :
conf
DOI :
10.1109/ITSC.2013.6728263
Filename :
6728263
Link To Document :
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