Streaming Video QoE Modeling and Prediction: A Long Short-Term Memory Approach
Nagabhushan Eswara, S Ashique, Anand Panchbhai, Soumen Chakraborty,, Hemanth P. Sethuram, Kiran Kuchi, Abhinav Kumar, and Sumohana S. Channappayya

TL;DR
This paper introduces LSTM-QoE, a recurrent neural network model that effectively predicts the time-varying quality of experience in streaming video, outperforming existing models by capturing complex temporal dependencies.
Contribution
The paper presents a novel LSTM-based QoE prediction model that models nonlinear and temporal dynamics of video streaming quality, validated on multiple datasets.
Findings
LSTM-QoE outperforms existing QoE models in accuracy.
The model effectively captures complex temporal dependencies.
State space analysis supports the model's effectiveness.
Abstract
HTTP based adaptive video streaming has become a popular choice of streaming due to the reliable transmission and the flexibility offered to adapt to varying network conditions. However, due to rate adaptation in adaptive streaming, the quality of the videos at the client keeps varying with time depending on the end-to-end network conditions. Further, varying network conditions can lead to the video client running out of playback content resulting in rebuffering events. These factors affect the user satisfaction and cause degradation of the user quality of experience (QoE). It is important to quantify the perceptual QoE of the streaming video users and monitor the same in a continuous manner so that the QoE degradation can be minimized. However, the continuous evaluation of QoE is challenging as it is determined by complex dynamic interactions among the QoE influencing factors. Towards…
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