Literature Study of Learning-Based Video Compression

Kholidiyah Masykuroh
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Abstract

Developments in telecommunications technology today, such as cellular with the fifth generation (5G), the development of IoT prototypes, and the migration of analog TV to digital TV starting in 2022. The development of various research using machine learning. The problem with video format information is that the video file size is quite large, so the transmission process requires a large bandwidth. In addition, sharing services such as Video on Demand (VoD) and Video Broadcasting are sensitive to delay. In comparison, the transmission media has limited capacity, such as terrestrial TV, Ethernet/Fast Ethernet, and wireless cellular data such as 2G, 3G HSPA, 4G, etc. Based on reports from Cisco, the development of internet users has increased by 10% per year, with 80% of total traffic using video. Developments in various video compression standards, such as the most recent H.264 and H.265, produce high-quality, low-bitrate video. Much research has been carried out with various proposed compression methods based on machine learning. Either uses singular block learning based or end-to-end. This research focuses on the literature study of video compression with machine learning.
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基于学习的视频压缩的文献研究
当今电信技术的发展,如第五代(5G)蜂窝、物联网原型的开发,以及从2022年开始模拟电视向数字电视的迁移。利用机器学习进行各种研究的发展。视频格式信息的问题是视频文件的大小相当大,因此传输过程需要很大的带宽。此外,视频点播(VoD)和视频广播等共享服务对延迟很敏感。相比之下,传输媒体的容量有限,如地面电视、以太网/快速以太网,以及2G、3G HSPA、4G等无线蜂窝数据。根据思科的报告,互联网用户的发展每年增长10%,80%的总流量使用视频。各种视频压缩标准的发展,例如最新的H.264和H.265,产生了高质量、低比特率的视频。已经对各种提出的基于机器学习的压缩方法进行了大量研究。要么使用基于奇异块学习,要么使用端到端学习。本研究主要针对机器学习视频压缩的相关文献进行研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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发文量
47
审稿时长
6 weeks
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