FaME-ML:使用机器学习的HTTP自适应流的快速多速率编码

Ekrem Çetinkaya, Hadi Amirpour, C. Timmerer, M. Ghanbari
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引用次数: 5

摘要

HTTP自适应流(HAS)是通过Internet传送视频内容的最常用方法。在HAS中以不同质量级别(即表示)对相同内容进行编码的需求对内容提供者来说是一个具有挑战性的问题。快速多速率编码方法试图通过重用先前编码表示中的信息来加速这一过程。在本文中,我们提出使用卷积神经网络(cnn)来加速多个表示的编码,并特别关注并行编码。在并行编码中,总时间复杂度被限制为并行编码的其中一个表示的最大时间复杂度。因此,不是降低所有表示的时间复杂度,而是降低最高的时间复杂度。实验结果表明,与HEVC参考软件相比,FaME-ML在并行编码场景下显著节省了时间复杂度(平均41%),比特率和质量下降略有增加。
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FaME-ML: Fast Multirate Encoding for HTTP Adaptive Streaming Using Machine Learning
HTTP Adaptive Streaming (HAS) is the most common approach for delivering video content over the Internet. The requirement to encode the same content at different quality levels (i.e., representations) in HAS is a challenging problem for content providers. Fast multirate encoding approaches try to accelerate this process by reusing information from previously encoded representations. In this paper, we propose to use convolutional neural networks (CNNs) to speed up the encoding of multiple representations with a specific focus on parallel encoding. In parallel encoding, the overall time-complexity is limited to the maximum time-complexity of one of the representations that are encoded in parallel. Therefore, instead of reducing the time-complexity for all representations, the highest time-complexities are reduced. Experimental results show that FaME-ML achieves significant time-complexity savings in parallel encoding scenarios (41% in average) with a slight increase in bitrate and quality degradation compared to the HEVC reference software.
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