Efficient Level of Service Classification for Traffic Monitoring in the Compressed Video Domain (bibtex)
@InProceedings{RT_ICME_1, author = {Tusch, Roland and Pletzer, Felix and Kraetschmer, Armin and Böszörmenyi, Laszlo and Rinner, Bernhard and Mariacher, Thomas and Harrer, Manfred}, booktitle = {ICME '12 Proceedings of the 2012 IEEE International Conference on Multimedia and Expo Workshops}, title = {Efficient Level of Service Classification for Traffic Monitoring in the Compressed Video Domain}, year = {2012}, address = {Piscataway (NJ)}, editor = {Zhang, Jian and Schonfeld, Dan and Deagan, David Feng}, month = {jul}, pages = {967-972}, publisher = {IEEE}, abstract = {This paper presents a new method for estimating the level of service (LOS) on motorways in the compressed video domain. The method performs statistical computations on motion vectors of MPEG4 encoded video streams within a predefined region of interest to determine a set of four motion features describing the speed and density of the traffic stream. These features are fed into a Gaussian radial basis function network to classify the corresponding LOS. To improve the classification results, vectors of moving objects are clustered and outliers are eliminated. The proposed method is designed to be executed on a server system, where a large number of camera live streams can be analyzed in parallel in real-time. Evaluations with a comprehensive set of real-world training and test data from an Austrian motorway have shown an average accuracy of 86.7% on the test data set for classifying all four LOS levels. With a mean execution time of 48 microseconds per frame on a common server, hundreds of video streams can be analyzed in real-time.}, doi = {10.1109/ICME.2012.101}, isbn13 = {978-1-4673-1659-0}, language = {EN}, location = {Melbourne, Australia}, talkdate = {2012.07.12}, talktype = {registered} }
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