FPO++: efficient encoding and rendering of dynamic neural radiance fields by analyzing and enhancing Fourier PlenOctrees

Saskia Rabich, Patrick Stotko, Reinhard Klein
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Abstract

Fourier PlenOctrees have shown to be an efficient representation for real-time rendering of dynamic neural radiance fields (NeRF). Despite its many advantages, this method suffers from artifacts introduced by the involved compression when combining it with recent state-of-the-art techniques for training the static per-frame NeRF models. In this paper, we perform an in-depth analysis of these artifacts and leverage the resulting insights to propose an improved representation. In particular, we present a novel density encoding that adapts the Fourier-based compression to the characteristics of the transfer function used by the underlying volume rendering procedure and leads to a substantial reduction of artifacts in the dynamic model. We demonstrate the effectiveness of our enhanced Fourier PlenOctrees in the scope of quantitative and qualitative evaluations on synthetic and real-world scenes.

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FPO++:通过分析和增强傅立叶全八叉树,高效编码和渲染动态神经辐射场
傅立叶全八叉树已被证明是实时渲染动态神经辐射场(NeRF)的高效表示方法。尽管这种方法有很多优点,但当它与最近用于训练每帧静态 NeRF 模型的最先进技术相结合时,就会受到压缩所带来的假象的影响。在本文中,我们对这些假象进行了深入分析,并利用分析结果提出了一种改进的表示方法。特别是,我们提出了一种新颖的密度编码,它能使基于傅立叶的压缩适应底层体积渲染程序所使用的传递函数的特性,从而大幅减少动态模型中的伪影。我们通过对合成场景和真实世界场景的定量和定性评估,证明了增强型傅立叶全八叉树的有效性。
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