Abstract

The video request service of users in 5G network will explode, and adaptive bit rate technology can provide users with reliable video response. Placing video resources on edge servers close to users can overcome the problem of excessive network load similar to traditional centralized cloud platform solutions. Moreover, multiple edge servers can provide caching and transcoding support by collaboration mechanisms, which further improves users’ Quality of Experience (QoE). However, the design difficulty of video caching and content distribution strategies is increased due to the diversity of collaboration mechanisms and the competition between local and collaborative services of edge servers for computing and storage resources. In order to solve this problem, video cache and content distribution problem is modeled as random integer programming problem in the multi-edge server at most two-hop collaboration scenario. In order to improve the security of video data transmission, the video stream is encrypted using an encryption algorithm based on Logistic chaotic-Quantum-dot Cellular Automata (QCA). For improving the efficiency of solving integer programming problems, this paper uses a pyramid intelligent evolution algorithm based on optimal cooperation strategy to solve this problem. Simulation experiments show that our proposed method can obtain higher QoE value compared with several newer methods. In addition, the average access delay of proposed method is shortened by more than 27.98%, which verifies its reliability.

Highlights

  • In 5G networks, video services will become the mainstream, and the contradiction between explosive growth of data volume and Quality of Experience (QoE) is becoming increasingly prominent [1]

  • According to behavioral characteristics of users, Adaptive Bit Rate (ABR) technology is widely used in video services to improve QoE of users [4, 5]

  • (2020) 9:56 it is generally not used to superimpose and decode multiple coding layers on the user side to obtain the bit rate video required by users, such as Scalable Video Coding (SVC) technology [6]

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Summary

Introduction

In 5G networks, video services will become the mainstream, and the contradiction between explosive growth of data volume and QoE is becoming increasingly prominent [1]. This paper mainly design a video cache and content distribution optimization strategy that is QoE-aware in a multi-edge collaborative computing environment.

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