Publication | Closed Access
MPEG VBR video traffic modeling and classification using fuzzy technique
155
Citations
25
References
2001
Year
Intelligent Traffic ManagementFuzzy LogicEngineeringInternet Traffic AnalysisMultimedia Signal ProcessingPattern RecognitionFuzzy TechniqueMpeg Vbr VideoVideo Coding FormatTraffic PredictionVideo QualityFuzzy C-meansStandard DeviationVideo Content AnalysisComputer ScienceVideo TransmissionTraffic Monitoring
We present an approach for MPEG variable bit rate (VBR) video modeling and classification using fuzzy techniques. We demonstrate that a type-2 fuzzy membership function, i.e., a Gaussian MF with uncertain variance, is most appropriate to model the log-value of I/P/B frame sizes in MPEG VBR video. The fuzzy c-means (FCM) method is used to obtain the mean and standard deviation (std) of T/P/B frame sizes when the frame category is unknown. We propose to use type-2 fuzzy logic classifiers (FLCs) to classify video traffic using compressed data. Five fuzzy classifiers and a Bayesian classifier are designed for video traffic classification, and the fuzzy classifiers are compared against the Bayesian classifier. Simulation results show that a type-2 fuzzy classifier in which the input is modeled as a type-2 fuzzy set and antecedent membership functions are modeled as type-2 fuzzy sets performs the best of the five classifiers when the testing video product is not included in the training products and a steepest descent algorithm is used to tune its parameters.
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