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Objective Video Quality Assessment Based on Machine Learning for Underwater Scientific Applications

机译:基于机器学习的水下视频客观视频质量评估

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摘要

Video services are meant to be a fundamental tool in the development of oceanic research. The current technology for underwater networks (UWNs) imposes strong constraints in the transmission capacity since only a severely limited bitrate is available. However, previous studies have shown that the quality of experience (QoE) is enough for ocean scientists to consider the service useful, although the perceived quality can change significantly for small ranges of variation of video parameters. In this context, objective video quality assessment (VQA) methods become essential in network planning and real time quality adaptation fields. This paper presents two specialized models for objective VQA, designed to match the special requirements of UWNs. The models are built upon machine learning techniques and trained with actual user data gathered from subjective tests. Our performance analysis shows how both of them can successfully estimate quality as a mean opinion score (MOS) value and, for the second model, even compute a distribution function for user scores.
机译:视频服务将成为海洋研究发展的基本工具。当前的水下网络(UWN)技术对传输容量施加了严格的限制,因为只有严重受限的比特率才可用。但是,以前的研究表明,尽管感知质量可能会因视频参数的微小变化而发生显着变化,但是体验质量(QoE)足以使海洋科学家认为该服务有用。在这种情况下,客观的视频质量评估(VQA)方法在网络规划和实时质量适应领域变得至关重要。本文针对目标VQA提出了两种专门的模型,旨在满足UWN的特殊要求。这些模型基于机器学习技术构建,并使用从主观测试中收集的实际用户数据进行训练。我们的性能分析表明,他们俩都可以成功地将质量作为平均意见得分(MOS)值进行估算,并且对于第二个模型,甚至可以计算用户得分的分布函数。

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