MMAIIVSep 26, 2024

Subjective and Objective Quality-of-Experience Evaluation Study for Live Video Streaming

arXiv:2409.17596v12 citationsh-index: 50
Originality Incremental advance
AI Analysis

This addresses the problem for media service providers needing to optimize live video streaming quality, though it is incremental as it builds on existing QoE research by focusing on live-specific distortions.

The paper tackles the lack of quality-of-experience (QoE) metrics for live video streaming by introducing the first live streaming QoE dataset, TaoLive QoE, with 42 source videos and 1,155 distorted ones, and proposing an end-to-end model, Tao-QoE, that integrates multi-scale semantic and motion features to predict QoE scores.

In recent years, live video streaming has gained widespread popularity across various social media platforms. Quality of experience (QoE), which reflects end-users' satisfaction and overall experience, plays a critical role for media service providers to optimize large-scale live compression and transmission strategies to achieve perceptually optimal rate-distortion trade-off. Although many QoE metrics for video-on-demand (VoD) have been proposed, there remain significant challenges in developing QoE metrics for live video streaming. To bridge this gap, we conduct a comprehensive study of subjective and objective QoE evaluations for live video streaming. For the subjective QoE study, we introduce the first live video streaming QoE dataset, TaoLive QoE, which consists of $42$ source videos collected from real live broadcasts and $1,155$ corresponding distorted ones degraded due to a variety of streaming distortions, including conventional streaming distortions such as compression, stalling, as well as live streaming-specific distortions like frame skipping, variable frame rate, etc. Subsequently, a human study was conducted to derive subjective QoE scores of videos in the TaoLive QoE dataset. For the objective QoE study, we benchmark existing QoE models on the TaoLive QoE dataset as well as publicly available QoE datasets for VoD scenarios, highlighting that current models struggle to accurately assess video QoE, particularly for live content. Hence, we propose an end-to-end QoE evaluation model, Tao-QoE, which integrates multi-scale semantic features and optical flow-based motion features to predicting a retrospective QoE score, eliminating reliance on statistical quality of service (QoS) features.

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