以质量为导向的在线学习对可扩展视频的不平等保护

A. Khalek, C. Caramanis, R. Heath
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引用次数: 3

摘要

由于帧间编码和运动补偿等与视频编码相关的因素,以及对运动不均匀的自然场景的心理视觉感知,视频丢包对感知视频质量的影响是不均匀的。这激发了基于丢失可见性对视频数据包进行不平等保护的动机。本文提出了一种基于两个关键动机的不等错误保护自适应在线算法:一方面,对于实时视频,视频序列没有预编码,离线方法是不可行的,必须在线确定维持目标视频质量水平的不等保护级别。另一方面,在线方法可以适应场景的变化以及视频时空特征的变化。提出的在线算法使用局部线性回归来学习每个可扩展视频层的数据包丢失与质量退化之间的映射,而不假设底层统计模型。局部性的概念捕捉了视频场景特征的相似性以及时间上的接近性。该算法可保证平均的目标视频质量水平,并快速收敛到稳定的解。此外,它在损失可见性的事实估计和对变化的视频时间特征的精细适应之间提供了偏差/方差权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online learning for quality-driven unequal protection of scalable video
Video packet losses affect perceived video quality non-uniformly due to several factors related to video encoding such as inter-frame coding and motion compensation as well as due to psycho-visual perception of natural scenes with unequal motion. This motivates protecting video packets unequally based on their loss visibility. This paper proposes an adaptive online algorithm for unequal error protection driven by two key motivations: On one hand, for real-time video, where a video sequence is not pre-encoded, an offline approach is infeasible and determining the unequal protection levels to maintain a target video quality level must be performed online. On the other hand, an online approach enables adapting to scene changes as well as changes in video temporal and spatial characteristics. The proposed online algorithm uses local linear regression to learn the mapping between packet losses from each scalable video layer and quality degradation without assuming an underlying statistical model. The notion of locality captures the similarity in video scene characteristics as well as proximity in time. The algorithm provably guarantees an average target video quality level and converges rapidly to a stable solution. Furthermore, it provides a bias/variance tradeoff between factual estimation of loss visibility and fine adaptation to the changing video temporal characteristics.
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