Progressive Modeling of Steered Mixture-of-Experts for Light Field Video Approximation

Ruben Verhack, G. Wallendael, Martijn Courteaux, P. Lambert, T. Sikora
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引用次数: 4

Abstract

Steered Mixture-of-Experts (SMoE) is a novel framework for the approximation, coding, and description of image modalities. The future goal is to arrive at a representation for Six Degrees-of-Freedom (6DoF) image data. The goal of this paper is to introduce SMoE for 4D light field videos by including the temporal dimension. However, these videos contain vast amounts of samples due to the large number of views per frame. Previous work on static light field images mitigated the problem by hard subdividing the modeling problem. However, such a hard subdivision introduces visually disturbing block artifacts on moving objects in dynamic image data. We propose a novel modeling method that does not result in block artifacts while minimizing the computational complexity and which allows for a varying spread of kernels in the spatio-temporal domain. Experiments validate that we can progressively model light field videos with increasing objective quality up to 0.97 SSIM.
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用于光场视频逼近的导向混合专家渐进建模
导向混合专家(SMoE)是一种用于图像模态逼近、编码和描述的新框架。未来的目标是得到六自由度(6DoF)图像数据的表示。本文的目标是通过包含时间维度来引入四维光场视频的SMoE。然而,由于每帧的观看次数很多,这些视频包含了大量的样本。以前在静态光场图像上的工作通过对建模问题进行硬细分来缓解这个问题。然而,这种硬细分会在动态图像数据中对运动物体引入视觉干扰的块伪影。我们提出了一种新的建模方法,该方法不会导致块伪影,同时最大限度地降低了计算复杂性,并允许核在时空域中的不同分布。实验证明,我们可以逐步模拟光场视频,提高物镜质量,最高可达0.97 SSIM。
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