Broadcast quality video over IP

IEEE Transactions on Multimedia(2001)

引用 57|浏览0
暂无评分
摘要
We consider the problem of designing systems for the transmission of video signals of the quality found in current television broadcasts, over high-speed segments of the public IP network. Our most important contribution is the definition of a network/coder interface for IP networks which gathers channel state information, and then sets parameters of the video coder to maximize the quality of the signal delivered to the receiver, while remaining fair to other data or video connections. This interface plays a role analogous to that of a Leaky Bucket controller, in that it specifies traffic shaping parameters which result in simultaneous good Quality-of-Service (QoS) for the source and good network performance. Since the network is not assumed to provide any form of QoS guarantee, fundamental to our construction is a hidden Markov model for the channel, based on which the interface solves a problem of optimal stochastic control, to decide how to configure the encoder. Other contributions are: a) modifications to the standard Internet transport protocol, to make it suitable for the transport of delay-constrained traffic and to gather channel state information, and b) the design of an error-resilient video coder. Experimental studies reveal that the proposed system is able to stream video signals of the quality of current TV-broadcasts, among hosts in wide-area networks connected to the experimental vBNS backbone
更多
查看译文
关键词
stream video signal,protocols,error-resilient video coder,wide-area network,video connection,good network performance,public ip network,video coder,interactive tv,video signal,channel state information,index terms—communication systems,stochastic systems.,hidden markov models,ip network,broadcast quality video,computer networks,indexing terms,internet,communication system,leaky bucket,hidden markov model,computer network,transport protocols,network performance,transport protocol,quality of service,traffic shaping
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要