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A Survey of Multimedia Big Data 被引量:1
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作者 zaijian wang Shiwen Mao +1 位作者 Lingyun Yang Pingping Tang 《China Communications》 SCIE CSCD 2018年第1期155-176,共22页
Multimedia big data brings tremendous challenges as well as opportunities for multimedia applications/services. In this paper, we present a survey and tutorial for multimedia big data. After discussing the characteris... Multimedia big data brings tremendous challenges as well as opportunities for multimedia applications/services. In this paper, we present a survey and tutorial for multimedia big data. After discussing the characteristics of multimedia big data such as human-centricity, multimodality, heterogeneity, unprecedented volume, and so on, this paper provides an overview of the state-of-the-art of multimedia big data, reviews the latest related technologies, and discusses the technical challenges. We conclude this paper with a discussion of open problems and future directions. 展开更多
关键词 MULTIMEDIA BIG data human-cen-tricity HETEROGENEITY MACHINE learning mul-timodality
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Internet Multimedia Traffic Classification from QoS Perspective Using Semi-Supervised Dictionary Learning Models 被引量:3
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作者 zaijian wang Yuning Dong +1 位作者 Shiwen Mao Xinheng wang 《China Communications》 SCIE CSCD 2017年第10期202-218,共17页
To address the issue of finegrained classification of Internet multimedia traffic from a Quality of Service(QoS) perspective with a suitable granularity, this paper defines a new set of QoS classes and presents a modi... To address the issue of finegrained classification of Internet multimedia traffic from a Quality of Service(QoS) perspective with a suitable granularity, this paper defines a new set of QoS classes and presents a modified K-Singular Value Decomposition(K-SVD) method for multimedia identification. After analyzing several instances of typical Internet multimedia traffic captured in a campus network, this paper defines a new set of QoS classes according to the difference in downstream/upstream rates and proposes a modified K-SVD method that can automatically search for underlying structural patterns in the QoS characteristic space. We define bagQoS-words as the set of specific QoS local patterns, which can be expressed by core QoS characteristics. After the dictionary is constructed with an excess quantity of bag-QoSwords, Locality Constrained Feature Coding(LCFC) features of QoS classes are extracted. By associating a set of characteristics with a percentage of error, an objective function is formulated. In accordance with the modified K-SVD, Internet multimedia traffic can be classified into a corresponding QoS class with a linear Support Vector Machines(SVM) clas-sifier. Our experimental results demonstrate the feasibility of the proposed classification method. 展开更多
关键词 dictionary learning traffic classication multimedia traffic K-singular value decomposition quality of service
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