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Performance analysis of machine learning for arbitrary downsizing of pre-encoded HEVC video

机译:机器学习的性能分析,可任意缩小预编码的HEVC视频

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摘要

Nowadays, broadcasters deliver ultra-high resolution video to their consumers. This live video is sent to a set-top box for display on a television. However, if one or more users in the home want to view the same video on their personal mobile devices with a lower display resolution and limited processing power, decoding the original ultra-high resolution video would result in stuttering and quickly drain the battery life on these devices. To enable a satisfactory consumer experience, the resolution of the video stream should be adapted to the target mobile device at the set-top box. The aim of this paper is to investigate the performance of different machine learning strategies to arbitrary downsize video pre-encoded with the high efficiency video coding standard (HEVC). These machine learning techniques exploit correlation between input and output coding information to predict the splitting behavior of HEVC coding units. Several machine learning algorithms are optimized. Additionally, both online and offline training strategies are tested. Of the tested algorithms, online-trained random forests achieve the best compression-efficiency with a bit rate increase of 5.4% and an average complexity reduction of 70%1.
机译:如今,广播公司向其消费者提供超高分辨率视频。该实时视频被发送到机顶盒,以在电视上显示。但是,如果在家中一个或多个用户希望在其个人移动设备上以较低的显示分辨率和有限的处理能力观看同一视频,则对原始的超高分辨率视频进行解码会导致结结并迅速耗尽电池电量。这些设备。为了获得令人满意的消费者体验,视频流的分辨率应适合机顶盒上的目标移动设备。本文的目的是研究针对采用高效视频编码标准(HEVC)预编码的任意尺寸缩小视频的不同机器学习策略的性能。这些机器学习技术利用输入和输出编码信息之间的相关性来预测HEVC编码单元的拆分行为。优化了几种机器学习算法。此外,还测试了在线和离线培训策略。在经过测试的算法中,在线训练的随机森林实现了最佳的压缩效率,比特率提高了5.4%,平均复杂度降低了70%1。

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