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Predictive dynamic bandwidth allocation for efficient transport of real-time VBR video over ATM

机译:预测性动态带宽分配,可通过ATM有效传输实时VBR视频

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This paper presents a novel approach to dynamic transmission bandwidth allocation for transport of real-time variable-bit-rate video in ATM networks. Video traffic statistics are measured in the frequency domain. The low-frequency signal captures the slow time-variation of consecutive scene changes while the high-frequency signal exhibits the feature of strong frame autocorrelation. Our queueing study indicates that the video transmission bandwidth in a finite-buffer system is essentially characterized by the low-frequency signal. We further observe in typical JPEG/MPEG video sequences that the time scale of video scene changes is in the range of a second or longer, which localizes the low-frequency video signal in a well-defined low-frequency band. Hence, in a network design it is feasible to implement dynamic allocation of video transmission bandwidth using on-line observation and prediction of scene changes. Two prediction schemes are examined: recursive least square method and time delay neural network method. A time delay neural network with low-complexity high-order architecture, called "pi-sigma network," is successfully used to predict scene changes. The overall dynamic bandwidth-allocation scheme presented is shown to be promising and practically feasible in obtaining efficient transmission of real-time video traffic.
机译:本文提出了一种动态传输带宽分配的新方法,用于在ATM网络中传输实时可变比特率视频。视频流量统计信息是在频域中测量的。低频信号捕获连续场景变化的慢时变,而高频信号则表现出强帧自相关的特征。我们的排队研究表明,有限缓冲系统中的视频传输带宽主要由低频信号表征。我们进一步在典型的JPEG / MPEG视频序列中观察到,视频场景变化的时间标度在一秒或更长时间内,这将低频视频信号定位在定义明确的低频频带中。因此,在网络设计中,使用在线观察和场景变化预测来实现视频传输带宽的动态分配是可行的。研究了两种预测方案:递归最小二乘法和时延神经网络方法。具有低复杂度高阶架构的延时神经网络被称为“ pi-sigma网络”,已成功用于预测场景变化。所展示的总体动态带宽分配方案在获得实时视频流量的有效传输方面是有希望的,并且在实践中是可行的。

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