FloRen:通过使用稀疏RGB相机的外观流进行实时高质量的人类性能渲染

Ruizhi Shao, Liliang Chen, Zerong Zheng, Hongwen Zhang, Yuxiang Zhang, Han Huang, Yandong Guo, Yebin Liu
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引用次数: 7

摘要

我们提出FloRen,一个实时,高分辨率的自由视图人体合成的新系统。我们的系统在1K分辨率下以15fps的速度运行,使用非常稀疏的RGB相机。在FloRen中,首先恢复粗级隐式几何作为初始化,然后通过基于外观流的神经渲染框架进行处理。我们的基于外观流的渲染框架包括三个步骤,即依赖于视图的深度细化、外观流估计和感知闭塞的颜色渲染。通过这种方式,我们解决了图像平面上的视图合成问题,可以有效地应用二维卷积神经网络,从而提高了高速性能。为了实现鲁棒的外观流估计,我们明确地将数据驱动的人类先验知识与多视图几何约束相结合。精确的外观流实现了从输入视图到新视图的精确颜色映射,极大地促进了高分辨率新视图的生成。我们证明,我们的系统达到了最先进的性能,甚至优于许多离线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FloRen: Real-time High-quality Human Performance Rendering via Appearance Flow Using Sparse RGB Cameras
We propose FloRen, a novel system for real-time, high-resolution free-view human synthesis. Our system runs at 15fps in 1K resolution with very sparse RGB cameras. In FloRen, a coarse-level implicit geometry is recovered at first as initialization, and then processed by a neural rendering framework based on appearance flow. Our appearance flow-based rendering framework consists of three steps, namely view-dependent depth refinement, appearance flow estimation and occlusion-aware color rendering. In this way, we resolve the view synthesis problem in the image plane, where 2D convolutional neural networks can be efficiently applied, contributing to high speed performance. For robust appearance flow estimation, we explicitly combine data-driven human prior knowledge with multiview geometric constraints. The accurate appearance flow enables precise color mapping from input view to novel view, which greatly facilitates high-resolution novel view generation. We demonstrate that our system achieves state-of-the-art performance and even outperforms many offline methods.
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