A Sub-Aperture Image Selection Refinement Method for Progressive Light Field Transmission

Wallace Bruno S. de Souza, B. Macchiavello, Eduardo Peixoto, E. Hung, Gene Cheung
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引用次数: 1

Abstract

Light field cameras capture the emanated light from a scene. This type of images allows for changing point of views or focal points by processing the captured information. Recently, a Progressive Light Field Communication (PLFC) was proposed. PLFC addresses an interactive Light Field (LF) streaming framework, where a client requests a certain view or focal point and a server synthesizes and transmits each requested image as a linear combination of Sub-Aperture Images (SAI). The main idea of PLFC is that as the virtual views are transmitted, the client gradually learns information about the LF, so eventually the client may posses enough information to locally create the virtual view at the required quality, avoiding the transmission of a new image. In order to PLFC work, an optimization algorithm which selects the SAIs that are used to create a certain virtual view is requested. Here, we improve over the previous PLFC proposal by presenting a method that focuses on a refinement algorithm for SAI selection, using dynamic Quantization Parameter (QP) during encoding, using an automatic method to determine the Lagrangian multiplier during optimization and modifying how the initial required cache is created. These proposed changes in the algorithm produce significant gains. The results shows gains up to 85.8% on BD-rate compared to trivial LF transmissions, whereas they're up to 32.8% compared to previous PLFC.
渐进式光场传输的子孔径选像细化方法
光场摄像机捕捉从一个场景发出的光。这种类型的图像允许通过处理捕获的信息来改变观点或焦点。最近,一种渐进光场通信(PLFC)被提出。PLFC解决了一个交互式光场(LF)流框架,其中客户端请求某个视图或焦点,服务器合成并传输每个请求的图像作为子孔径图像(SAI)的线性组合。PLFC的主要思想是,随着虚拟视图的传输,客户端逐渐了解LF的信息,因此最终客户端可能拥有足够的信息,可以在本地创建所需质量的虚拟视图,从而避免传输新图像。为了使PLFC工作,需要一种优化算法来选择用于创建某个虚拟视图的sai。在这里,我们改进了之前的PLFC提案,提出了一种方法,该方法专注于SAI选择的改进算法,在编码过程中使用动态量化参数(QP),在优化过程中使用自动方法确定拉格朗日乘子,并修改初始所需缓存的创建方式。这些提议的算法变化产生了显著的收益。结果表明,与普通LF传输相比,bd速率的增益高达85.8%,而与以前的PLFC相比,增益高达32.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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