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Adaptive Wireless Video Streaming Based on Edge Computing: Opportunities and Approaches

机译:基于边缘计算的自适应无线视频流:机遇与方法

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Dynamic Adaptive Streaming over HTTP (DASH) has been widely adopted to deal with such user diversity as network conditions and device capabilities. In DASH systems, the computation-intensive transcoding is the key technology to enable video rate adaptation, and cloud has become a preferred solution for massive video transcoding. Yet the cloud-based solution has the following two drawbacks. First, a video stream now has multiple versions after transcoding, which increases the network traffic traversing the core network. Second, the transcoding strategy is normally fixed and thus is not flexible to adapt to the dynamic change of viewers. Considering that mobile users, who normally experience dynamic network conditions from time to time, have occupied a very large portion of the total users, adaptive wireless transcoding is of great importance. To this end, we propose an adaptive wireless video transcoding framework based on the emerging edge computing paradigm by deploying edge transcoding servers close to base stations. With this design, the core network only needs to send the source video stream to the edge transcoding server rather than one stream for each viewer, and thus the network traffic across the core network is significantly reduced. Meanwhile, our edge transcoding server cooperates with the base station to transcode videos at a finer granularity according to the obtained users' channel conditions, which smartly adjusts the transcoding strategy to tackle with time-varying wireless channels. In order to improve the bandwidth utilization, we also develop efficient bandwidth adjustment algorithms that adaptively allocate the spectrum resources to individual mobile users. We validate the effectiveness of our proposed edge computing based framework through extensive simulations, which confirm the superiority of our framework.
机译:HTTP动态自适应流(DASH)已被广泛采用,以处理诸如网络条件和设备功能之类的用户多样性。在DASH系统中,计算密集型转码是实现视频速率自适应的关键技术,而云已成为大规模视频转码的首选解决方案。然而,基于云的解决方案具有以下两个缺点。首先,视频流在转码后现在具有多个版本,这增加了穿越核心网络的网络流量。其次,转码策略通常是固定的,因此不能灵活适应观看者的动态变化。考虑到通常不时经历动态网络状况的移动用户已经占据了总用户的很大一部分,因此自适应无线转码非常重要。为此,我们通过在边缘基站附近部署边缘转码服务器,提出了一种基于新兴边缘计算范式的自适应无线视频转码框架。通过这种设计,核心网络仅需要将源视频流发送到边缘转码服务器,而不是为每个观众发送一个视频流,因此可以大大减少核心网络上的网络流量。同时,我们的边缘转码服务器与基站合作,根据获取的用户的频道状况以更细粒度对视频进行转码,从而巧妙地调整了转码策略,以应对时变无线信道。为了提高带宽利用率,我们还开发了有效的带宽调整算法,可将频谱资源自适应地分配给各个移动用户。我们通过广泛的仿真验证了我们提出的基于边缘计算的框架的有效性,这证实了我们框架的优越性。

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