DNNStream:基于深度学习的内容自适应实时流

Satish Kumar Suman, Aniket Dhok, Swapnil Bhole
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引用次数: 1

摘要

随着现代智能手机、AR、VR服务的出现以及移动设备显示分辨率的提高,再加上实时流媒体服务,对高分辨率视频的需求蓬勃发展。为了满足这一需求,视频点播应用采用了各种自适应比特率流方法。然而,由于延迟限制,在上述方法中使用多通道编码使得它们在实时视频流中过时。在这项工作中,我们绕过了视频点播应用中使用的传统多重编码,并提出了一种新的基于机器学习的方法,该方法可以在超低延迟应用中以特定比特率估计给定内容的最佳视频分辨率。一种捕捉视频序列中时间和空间相关性的新特征被用于训练深度神经网络(DNN)模型。设计了一个基于python的测试平台来评估所提出的方案。实验结果验证了该方法在实时移动视频流应用中的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DNNStream: Deep-learning based Content Adaptive Real-time Streaming
With the advent of modern smartphones, AR, VR services and advancement in display resolution of mobile devices coupled with real-time streaming services, the demand for highresolution video has boomed. To fulfill this requirement, a variety of Adaptive Bit-Rate Streaming methods for Video-on-Demand applications are employed. However, the use of multi-pass encoding in the aforementioned methods renders them obsolete when it comes to real-time video streaming due to latency restrictions. In this work, we bypass the conventional multiple-encoding used in Video-on-Demand applications and present a novel machinelearning-based approach that estimates the optimal video resolution for a given content at a particular bit-rate for ultra low latency applications. A new feature that captures temporal as well as spatial correlation in video sequence has been used to train the Deep Neural Network (DNN) model. A python-based testbed is designed to evaluate the proposed scheme. Experiment results corroborate the viability and effectiveness of the proposed method for real-time mobile video streaming applications.
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