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Rate-Prediction Structure Complexity Analysis for Multi-view Video Coding Using Hybrid Genetic Algorithms

机译:基于混合遗传算法的多视点视频码率预测结构复杂度分析

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Efficient exploitation of the temporal and inter-view correlation is critical to multi-view video coding (MVC), and the key to it relies on the design of prediction chain structure according to the various pattern of correlations. In this paper, we propose a novel prediction structure model to design optimal MVC coding schemes along with tradeoff analysis in depth between compression efficiency and prediction structure complexity for certain standard functionalities. Focusing on the representation of the entire set of possible chain structures rather than certain typical ones, the proposed model can given efficient MVC schemes that adaptively vary with the requirements of structure complexity and video source characteristics (the number of views, the degrees of temporal and interview correlations). To handle large scale problem in model optimization, we deploy a hybrid genetic algorithm which yields satisfactory results shown in the simulations.
机译:时间和视图间相关性的有效利用对于多视图视频编码(MVC)至关重要,而其关键则取决于根据各种相关性模式设计的预测链结构。在本文中,我们提出了一种新颖的预测结构模型,以设计最佳的MVC编码方案,并针对某些标准功能在压缩效率与预测结构复杂度之间进行了权衡分析。着眼于整个可能的链结构的集合而不是某些典型的链结构的表示,所提出的模型可以给出有效的MVC方案,该方案随结构复杂性和视频源特性(视点数,时间和访谈相关性)。为了处理模型优化中的大规模问题,我们部署了混合遗传算法,该算法产生了令人满意的仿真结果。

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