On the Area Expected Distortion of Scalable Videos in Multi-Frequency System

Karthiyayeni Govindasamy, A. Mahmud, Siva Priya Thiagarajah, A. Aziz, M. Roslee
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Abstract

We investigate new performance analysis of multi-channel Scalable Video Coding (SVC) in multi-frequency system using Area Expected Distortion (AED). We begin by outlining the obtained explicit expression of AED in multi-frequency system namely fractional frequency reuse (FFR), for single layer and two-layer SVC. We start with mathematical model for single-layer and two-layered SVC, where expected distortion of the SVC that depends on the trade-off between the probability of outage and quantization accuracy is derived. The novel performance measurement of AED is then used to measure the relationship between the average distortion rate, outage probability and channel allocation per area in multi-frequency systems. Analysis of AED for FFR shows that the two-layer SVC outperforms the single layer transmission with 60 percent lesser expected distortion at 20dB, and we deduced a system parameter for two layer SVC, that given minimum AED when the threshold distance is at 0.86km and 0.78km at 20dB and 0dB respectively. The analytical results are verified using the Monte Carlo simulations.
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多频系统中可缩放视频的面积期望失真
研究了一种基于面积预期失真(AED)的多频系统中多通道可扩展视频编码(SVC)性能分析方法。本文首先概述了得到的多频系统中AED的显式表达式,即单层和双层SVC的分数频率复用(FFR)。我们从单层和双层SVC的数学模型开始,其中SVC的预期失真取决于中断概率和量化精度之间的权衡。在此基础上,提出了一种新的AED性能测量方法,用于测量多频系统中平均失真率、中断概率和信道分配之间的关系。对FFR的AED分析表明,两层SVC在20dB时的预期失真比单层传输低60%,并推导出两层SVC的系统参数,分别在20dB和0dB时给出阈值距离为0.86km和0.78km时的最小AED。通过蒙特卡罗仿真验证了分析结果。
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