VMesh: Hybrid Volume-Mesh Representation for Efficient View Synthesis
- URL: http://arxiv.org/abs/2303.16184v1
- Date: Tue, 28 Mar 2023 17:49:42 GMT
- Title: VMesh: Hybrid Volume-Mesh Representation for Efficient View Synthesis
- Authors: Yuan-Chen Guo, Yan-Pei Cao, Chen Wang, Yu He, Ying Shan, Xiaohu Qie,
Song-Hai Zhang
- Abstract summary: We present a hybrid volume-mesh representation, VMesh, which depicts an object with a textured mesh along with an auxiliary sparse volume.
VMesh can be obtained from multi-view images of an object and renders at 2K 60FPS on common consumer devices with high fidelity.
- Score: 31.52438192597056
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the emergence of neural radiance fields (NeRFs), view synthesis quality
has reached an unprecedented level. Compared to traditional mesh-based assets,
this volumetric representation is more powerful in expressing scene geometry
but inevitably suffers from high rendering costs and can hardly be involved in
further processes like editing, posing significant difficulties in combination
with the existing graphics pipeline. In this paper, we present a hybrid
volume-mesh representation, VMesh, which depicts an object with a textured mesh
along with an auxiliary sparse volume. VMesh retains the advantages of
mesh-based assets, such as efficient rendering, compact storage, and easy
editing, while also incorporating the ability to represent subtle geometric
structures provided by the volumetric counterpart. VMesh can be obtained from
multi-view images of an object and renders at 2K 60FPS on common consumer
devices with high fidelity, unleashing new opportunities for real-time
immersive applications.
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