Learning to Predict Streaming Video QoE: Distortions, Rebuffering and Memory
Christos G. Bampis, Alan C. Bovik

TL;DR
This paper introduces Video ATLAS, a machine learning framework that predicts user QoE in streaming video by combining quality, rebuffering, and memory features, improving accuracy over existing metrics.
Contribution
The paper presents a novel QoE prediction model that integrates multiple features and addresses the combined effects of quality changes and rebuffering in streaming videos.
Findings
Outperforms state-of-the-art video quality metrics
Generalizes well across different datasets
Provides improved QoE prediction accuracy
Abstract
Mobile streaming video data accounts for a large and increasing percentage of wireless network traffic. The available bandwidths of modern wireless networks are often unstable, leading to difficulties in delivering smooth, high-quality video. Streaming service providers such as Netflix and YouTube attempt to adapt their systems to adjust in response to these bandwidth limitations by changing the video bitrate or, failing that, allowing playback interruptions (rebuffering). Being able to predict end user' quality of experience (QoE) resulting from these adjustments could lead to perceptually-driven network resource allocation strategies that would deliver streaming content of higher quality to clients, while being cost effective for providers. Existing objective QoE models only consider the effects on user QoE of video quality changes or playback interruptions. For streaming…
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Taxonomy
TopicsImage and Video Quality Assessment · Video Coding and Compression Technologies · Advanced Data Compression Techniques
