CVMar 13, 2023

SDF-3DGAN: A 3D Object Generative Method Based on Implicit Signed Distance Function

arXiv:2303.06821v18 citationsh-index: 10Has Code
Originality Incremental advance
AI Analysis

This work addresses the problem of generating realistic 3D objects and images for applications in computer vision and graphics, representing an incremental improvement with specific gains in rendering quality and efficiency.

The paper tackles 3D object generation and 3D-aware image synthesis by introducing an implicit Signed Distance Function (SDF) representation and a new SDF neural renderer, achieving higher quality and efficiency with favorable performance against state-of-the-art methods on public benchmarks.

In this paper, we develop a new method, termed SDF-3DGAN, for 3D object generation and 3D-Aware image synthesis tasks, which introduce implicit Signed Distance Function (SDF) as the 3D object representation method in the generative field. We apply SDF for higher quality representation of 3D object in space and design a new SDF neural renderer, which has higher efficiency and higher accuracy. To train only on 2D images, we first generate the objects, which are represented by SDF, from Gaussian distribution. Then we render them to 2D images and use them to apply GAN training method together with 2D images in the dataset. In the new rendering method, we relieve all the potential of SDF mathematical property to alleviate computation pressure in the previous SDF neural renderer. In specific, our new SDF neural renderer can solve the problem of sampling ambiguity when the number of sampling point is not enough, \ie use the less points to finish higher quality sampling task in the rendering pipeline. And in this rendering pipeline, we can locate the surface easily. Therefore, we apply normal loss on it to control the smoothness of generated object surface, which can make our method enjoy the much higher generation quality. Quantitative and qualitative experiments conducted on public benchmarks demonstrate favorable performance against the state-of-the-art methods in 3D object generation task and 3D-Aware image synthesis task. Our codes will be released at https://github.com/lutao2021/SDF-3DGAN.

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