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Real-time Video Quality Assessment in Packet Networks: A Neural Network Model

机译:分组网络中的实时视频质量评估:一种神经网络模型

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摘要

There is a great demand to assess video quality transmitted in real time over packet networks, and to make this assessment in real time too. Quality assessment is achieved using two types of methods: objective or subjective. Subjective methods give more reliable results (objective ones do not correlate well with human perception), but unfortunately, they are not suitable to real-time applications and are difficult to carry out. In this paper, we show how Artificial Neural Networks (ANN) can be used to mimic the way by which a group of human subjects assess video quality when this video is distorted by certain quality-affecting parameters (e.g. Packet loss rate, loss distribution, bit rate, frame rate, encoded frame type, etc.). Our method can be used to measure in real time the subjective video quality with very good precision. In order to illustrate its applicability, we chose to assess the quality of video flows transmitted over IP networks and we carried out subjective quality tests for video distorted by variations of those parameters.
机译:迫切需要评估通过分组网络实时传输的视频质量,并且也要进行实时评估。使用两种方法可以实现质量评估:客观或主观。主观方法可提供更可靠的结果(客观方法与人类感知的相关性不高),但不幸的是,它们不适合实时应用且难以执行。在本文中,我们展示了当该视频因某些质量影响参数(例如,丢包率,丢失分布,丢包等)而被扭曲时,如何使用人工神经网络(ANN)来模拟一组人类对象评估视频质量的方式。比特率,帧率,编码帧类型等)。我们的方法可用于以非常好的精度实时测量主观视频质量。为了说明其适用性,我们选择评估通过IP网络传输的视频流的质量,并对因这些参数变化而失真的视频进行了主观质量测试。

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