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Adaptive Reservation of Network Resources According to Video Classification Scenes

机译:根据视频分类场景自适应预留网络资源

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摘要

Video quality evaluation needs a combined approach that includes subjective and objective metrics, testing, and monitoring of the network. This paper deals with the novel approach of mapping quality of service (QoS) to quality of experience (QoE) using QoE metrics to determine user satisfaction limits, and applying QoS tools to provide the minimum QoE expected by users. Our aim was to connect objective estimations of video quality with the subjective estimations. A comprehensive tool for the estimation of the subjective evaluation is proposed. This new idea is based on the evaluation and marking of video sequences using the sentinel flag derived from spatial information (SI) and temporal information (TI) in individual video frames. The authors of this paper created a video database for quality evaluation, and derived SI and TI from each video sequence for classifying the scenes. Video scenes from the database were evaluated by objective and subjective assessment. Based on the results, a new model for prediction of subjective quality is defined and presented in this paper. This quality is predicted using an artificial neural network based on the objective evaluation and the type of video sequences defined by qualitative parameters such as resolution, compression standard, and bitstream. Furthermore, the authors created an optimum mapping function to define the threshold for the variable bitrate setting based on the flag in the video, determining the type of scene in the proposed model. This function allows one to allocate a bitrate dynamically for a particular segment of the scene and maintains the desired quality. Our proposed model can help video service providers with the increasing the comfort of the end users. The variable bitstream ensures consistent video quality and customer satisfaction, while network resources are used effectively. The proposed model can also predict the appropriate bitrate based on the required quality of video sequences, defined using either objective or subjective assessment.
机译:视频质量评估需要一种组合方法,包括网络的主观和客观度量,测试和监控。本文涉及使用QoE指标将服务质量(QoS)映射到经验质量(QoS)的新方法,以确定用户满意限制,并应用QoS工具提供用户预期的最小QoE。我们的目标是通过主观估算来连接视频质量的客观估算。提出了一种估计主观评价的综合工具。该新思路基于使用从单独的视频帧中的空间信息(SI)和时间信息(TI)导出的Sentinel标志的视频序列的评估和标记。本文的作者为质量评估的视频数据库创建了一个视频数据库,以及从每个视频序列派生SI和TI以进行分类场景。数据库中的视频场景是通过客观和主观评估评估的。基于结果,本文定义和介绍了一种预测主观质量的新模型。使用基于客观评估的人工神经网络和由定性参数定义的视频序列的类型来预测该质量,例如分辨率,压缩标准和比特流。此外,作者创建了一种基于视频中的标志来定义变量比特率设置的最佳映射功能,确定所提出的模型中的场景类型。此功能允许一个人为场景的特定段动态分配比特率,并保持所需的质量。我们所提出的模型可以帮助视频服务提供商增加最终用户的舒适度。变量比特流可确保一致的视频质量和客户满意度,而网络资源有效地使用。所提出的模型还可以根据视频序列的所需质量来预测适当的比特率,使用目标或主观评估定义。

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