A signed distance function (SDF) as the 3D shape description is one of the most effective approaches to represent 3D geometry for rendering and reconstruction. Our work is inspired by the state-of-the-art method DeepSDF that learns and analyzes the 3D shape as the iso-surface of its shell and this method has shown promising results especially in the 3D shape reconstruction and compression domain. In this paper, we consider the degeneration problem of reconstruction coming from the capacity decrease of the DeepSDF model, which approximates the SDF with a neural network and a single latent code. We propose Local Geometry Code Learning (LGCL), a model that improves the original DeepSDF results by learning from a local shape geometry of the full 3D shape. We add an extra graph neural network to split the single transmittable latent code into a set of local latent codes distributed on the 3D shape. Mentioned latent codes are used to approximate the SDF in their local regions, which will alleviate the complexity of the approximation compared to the original DeepSDF. Furthermore, we introduce a new geometric loss function to facilitate the training of these local latent codes. Note that other local shape adjusting methods use the 3D voxel representation, which in turn is a problem highly difficult to solve or even is insolvable. In contrast, our architecture is based on graph processing implicitly and performs the learning regression process directly in the latent code space, thus make the proposed architecture more flexible and also simple for realization. Our experiments on 3D shape reconstruction demonstrate that our LGCL method can keep more details with a significantly smaller size of the SDF decoder and outperforms considerably the original DeepSDF method under the most important quantitative metrics.
翻译:作为 3D 形状描述( SDF) 的签名远程函数( SDF), 是代表 3D 构建和重建的 3D 几何 的最有效方法之一 。 我们的工作受到 DeepSDF 最先进的方法的启发 。 DeepSDF 将学习和分析 3D 形状作为外壳的外表表层, 这个方法显示了令人充满希望的结果 。 在本文中, 我们考虑到重建的退化问题来自 DeepSDF 模型的能力下降, 该模型以神经系统网络和单一潜伏代码来代表 3D 的 3D 构建。 我们提议了 本地测量代码学习( LGCL ), 这个模型通过学习全 3D 形状的本地形状来改进原始的 DeepSDFD 。 我们添加了一个额外的图形网络, 将单一传输潜伏代码分成一套在 3D 形状上分布的本地潜伏代码。 引用的内含暗暗的代码用来在本地区域中接近 SDFF, 这将比原始的 DEBSDF DF 更复杂 。 此外, 我们引入了一个新的几数 的直径数据解的解的解解过程,, 将使得我们的直立的系统化过程更精确的系统化的系统化的系统化的系统化过程 。