QoE-estimation models for video streaming services

Kazuhisa Yamagishi
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引用次数: 3

Abstract

As encoders and decoders (codecs), networks, and displays have become more technologically advanced, network and video-streaming-service providers have been able to provide video-streaming services over a network (e.g., fiber-to-the home and long-term evolution); therefore, the use of these services has been increasing drastically in the past decade. To maintain the high quality of experience (QoE) of these services, network and service providers need to invest in equipment (e.g., network devices, codecs, and servers). To increase return on investment, the QoE of these services needs to be appropriately designed with as little investment as possible, and its normality needs to be monitored while services are provided. In general, the QoE of these services degrades due to compression and network conditions (e.g., packet loss and delay). Therefore, it is necessary to develop a QoE-estimation model by taking into account the impact of compression and network on quality. This paper introduces subjective-quality-assessment methods and QoE-estimation models that assess user QoE in video-streaming services and standardization activities.
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视频流服务的qos估计模型
随着编码器和解码器(编解码器)、网络和显示器在技术上变得更加先进,网络和视频流服务提供商已经能够通过网络(例如光纤到户和长期演进)提供视频流服务;因此,这些服务的使用在过去十年中急剧增加。为了保持这些服务的高质量体验(QoE),网络和服务提供商需要投资于设备(例如,网络设备、编解码器和服务器)。为了增加投资回报,需要以尽可能少的投资适当地设计这些服务的QoE,并且在提供服务时需要监视其正常性。通常,由于压缩和网络条件(例如,数据包丢失和延迟),这些服务的QoE会降低。因此,有必要建立一个考虑压缩和网络对质量影响的qos估计模型。介绍了视频流服务和标准化活动中用户质量评价的主观质量评价方法和质量评价模型。
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