Abstract

With regard to video streaming services under wireless networks, how to improve the quality of experience (QoE) has always been a challenging task. Especially after the arrival of the 5G era, more attention has been paid to analyze the experience quality of video streaming in more complex network scenarios (such as 5G-powered drone video transmission). Insufficient buffer in the video stream transmission process will cause the playback to freeze [1]. In order to cope with this defect, this paper proposes a buffer starvation evaluation model based on deep learning and a video stream scheduling model based on reinforcement learning. This approach uses the method of machine learning to extract the correlation between the buffer starvation probability distribution and the traffic load, thereby obtaining the explicit evaluation results of buffer starvation events and a series of resource allocation strategies that optimize long-term QoE. In order to deal with the noise problem caused by the random environment, the model introduces an internal reward mechanism in the scheduling process, so that the agent can fully explore the environment. Experiments have proved that our framework can effectively evaluate and improve the video service quality of 5G-powered UAV.

Highlights

  • In recent years, the popularity of 5Th generation mobile networks (5G) cellular networks has allowed a variety of mobile devices to communicate with each other and provide different services [1–3]

  • 3.1 Buffer starvation evaluation model 3.1.1 Overview We propose a packet-level deep learning model to calculate the starvation probability and the distribution of starvation behaviors during video streaming

  • When the video streaming transmission process started in different states, we evaluated the fluctuation of the objective quality of experience (QoE), as shown in Figs. 11 and 12

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Summary

Introduction

The popularity of 5G cellular networks has allowed a variety of mobile devices to communicate with each other and provide different services [1–3]. The development of 5G-powered UAV is rapid, and real-time video backhaul is an important service that this equipment can provide. Some key performance indicators used to evaluate the quality of user experience are indispensable. Throughout these indicators, buffer starvation probability and buffer cumulative duration deserve more attention. Insufficient buffer will cause the image to no longer change, that is, the video freezes.

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