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A time-varying subjective quality model for mobile streaming videos with stalling events

机译:具有停滞事件的移动流视频的时变主观质量模型

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Over-the-top mobile video streaming is invariably influenced by volatile network conditions which cause playback interruptions (stalling events), thereby impairing users' quality of experience (QoE). Developing models that can accurately predict users' QoE could enable the more efficient design of quality-control protocols for video streaming networks that reduce network operational costs while still delivering high-quality video content to the customers. Existing objective models that predict QoE are based on global video features, such as the number of stall events and their lengths, and are trained and validated on a small pool of ad hoc video datasets, most of which are not publicly available. The model we propose in this work goes beyond previous models as it also accounts for the fundamental effect that a viewer's recent level of satisfaction or dissatisfaction has on their overall viewing experience. In other words, the proposed model accounts for and adapts to the recency, or hysteresis effect caused by a stall event in addition to accounting for the lengths, frequency of occurrence, and the positions of stall events - factors that interact in a complex way to affect a user's QoE. On the recently introduced LIVE-Avvasi Mobile Video Database, which consists of 180 distorted videos of varied content that are afflicted solely with over 25 unique realistic stalling events, we trained and validated our model to accurately predict the QoE, attaining standout QoE prediction performance.
机译:不稳定的网络状况总是会影响移动视频流的传输,这些网络状况会导致播放中断(停顿事件),从而损害用户的体验质量(QoE)。开发能够准确预测用户QoE的模型可以为视频流网络实现更有效的质量控制协议设计,从而降低网络运营成本,同时仍向客户提供高质量的视频内容。现有的预测QoE的客观模型是基于全局视频功能(例如,停顿事件的数量及其长度),并在少量临时视频数据集上进行训练和验证的,其中大多数是不公开的。我们在这项工作中提出的模型超越了以前的模型,因为它也说明了观众最近的满意或不满意水平对其整体观看体验的根本影响。换句话说,除了考虑长度,发生频率和失速事件的位置以外,所提出的模型还考虑并适应了失速事件引起的新近度或滞后效应,这些因素以复杂的方式相互作用影响用户的QoE。在最近推出的LIVE-Avvasi移动视频数据库上,该视频数据库包含180种各种内容的失真视频,这些视频仅受到25多次独特的现实停滞事件的影响,我们训练并验证了模型以准确地预测QoE,从而获得出色的QoE预测性能。

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