DocumentCode :
3465653
Title :
Traffic congestion estimation using HMM models without vehicle tracking
Author :
Porikli, Fatih ; Li, Xiaokun
Author_Institution :
Audio-Video Content Anal. Group, Mitsubishi Electr. Res. Labs., Cambridge, MA, USA
fYear :
2004
fDate :
14-17 June 2004
Firstpage :
188
Lastpage :
193
Abstract :
We propose an unsupervised, low-latency traffic congestion estimation algorithm that operates on the MPEG video data. We extract congestion features directly in the compressed domain, and employ Gaussian Mixture Hidden Markov Models (GM-HMM) to detect traffic condition. First, we construct a multi-dimensional feature vector from the parsed DCT coefficients and motion vectors. Then, we train a set of left-to-right HMM chains corresponding to five traffic patterns (empty, open flow, mild congestion, heavy congestion, and stopped), and use a Maximum Likelihood (ML) criterion to determine the state from the outputs of the separate HMM chains. We calculate a confidence score to assess the reliability of the detection results. The proposed method is computationally efficient and modular. Our tests prove that the feature vector is invariant to different illumination conditions, e.g., sunny, cloudy, dark. Furthermore, we do not need to impose different models for different camera setups, thus we significantly reduce the system initialization workload and improve its adaptability. Experimental results show that the precision rate of the presented algorithm is very high- around 95%.
Keywords :
Gaussian processes; data compression; discrete cosine transforms; feature extraction; hidden Markov models; maximum likelihood estimation; road traffic; traffic control; traffic engineering computing; video coding; DCT coefficients; Gaussian mixture hidden markov models; HMM chains; HMM models; ML criterion; MPEG video data; camera; congestion features; illumination conditions; maximum likelihood criterion; motion vectors; multidimensional feature vector; reliability; traffic condition detection; traffic congestion estimation; traffic patterns; unsupervised algorithm; vehicle tracking; Data mining; Discrete cosine transforms; Feature extraction; Hidden Markov models; Maximum likelihood detection; Maximum likelihood estimation; Traffic control; Transform coding; Vehicles; Video compression;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Vehicles Symposium, 2004 IEEE
Print_ISBN :
0-7803-8310-9
Type :
conf
DOI :
10.1109/IVS.2004.1336379
Filename :
1336379
Link To Document :
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