Objective quality prediction model for lost frames in 3D video over TS

Bruno Feitor, P. Assunção, Joao R. S. Soares, L. Cruz, R. Marinheiro
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引用次数: 19

Abstract

This paper proposes an objective model to predict the quality of lost frames in 3D video streams. The model is based only on header information from three different packet-layer levels: Network Abstraction Layer (NAL), Packetised Elementary Streams (PES) and Transport Stream (TS). Transmission errors leading to undecodable TS packets are assumed to result in frame loss. The proposed method estimates the size of the lost frames, which is used as a model parameter to predict their objective quality measured as the Structural Similarity Index Metric (SSIM). The results show that SSIM of missing stereoscopic frames in 3D coded video can be predicted with Root Mean Square Error (RMSE) accuracy of about 0.1 and Pearson correlation coefficient of 0.8, taking the SSIM of uncorrupted frames as reference. It is concluded that the proposed model is capable of estimating the SSIM quite accurately using only the lost frames estimated sizes.
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基于TS的三维视频丢帧质量客观预测模型
提出了一种预测三维视频流中丢失帧质量的客观模型。该模型仅基于来自三个不同包层级别的报头信息:网络抽象层(NAL)、分组基本流(PES)和传输流(TS)。传输错误导致不可解码的TS数据包被认为会导致帧丢失。该方法估计丢失帧的大小,并将其作为模型参数来预测丢失帧的客观质量,即结构相似度指标(SSIM)。结果表明,以未损坏帧的SSIM为参考,可以预测三维编码视频中缺失立体帧的SSIM, RMSE精度约为0.1,Pearson相关系数为0.8。结果表明,该模型仅使用估计的丢失帧大小就能较准确地估计SSIM。
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