Deep implicit functions have shown remarkable shape modeling ability in various 3D computer vision tasks. One drawback is that it is hard for them to represent a 3D shape as multiple parts. Current solutions learn various primitives and blend the primitives directly in the spatial space, which still struggle to approximate the 3D shape accurately. To resolve this problem, we introduce a novel implicit representation to represent a single 3D shape as a set of parts in the latent space, towards both highly accurate and plausibly interpretable shape modeling. Our insight here is that both the part learning and the part blending can be conducted much easier in the latent space than in the spatial space. We name our method Latent Partition Implicit (LPI), because of its ability of casting the global shape modeling into multiple local part modeling, which partitions the global shape unity. LPI represents a shape as Signed Distance Functions (SDFs) using surface codes. Each surface code is a latent code representing a part whose center is on the surface, which enables us to flexibly employ intrinsic attributes of shapes or additional surface properties. Eventually, LPI can reconstruct both the shape and the parts on the shape, both of which are plausible meshes. LPI is a multi-level representation, which can partition a shape into different numbers of parts after training. LPI can be learned without ground truth signed distances, point normals or any supervision for part partition. LPI outperforms the latest methods under the widely used benchmarks in terms of reconstruction accuracy and modeling interpretability. Our code, data and models are available at https://github.com/chenchao15/LPI.
翻译:深层隐含功能在各种 3D 计算机视觉任务中显示了显著的形状模型能力。 一个缺点是, 它们很难将3D 形状作为多个部分来表现。 当前解决方案在空间空间中直接学习各种原始和混合原始, 这些空间仍然难以精确地接近 3D 形状。 为了解决这个问题, 我们引入了一个新的隐含表达方式, 将单一的 3D 形状作为隐蔽空间的一组部件, 以高度准确和令人信服地可解释的形状模型。 我们这里的洞察力是, 部分学习和部分混合在潜伏空间中比在空间中要容易得多。 我们给出了我们的方法 Lentent Partation Implicit (LPI), 因为它能够将全球形状模型建成多个局部的模型, 从而分隔全球形状。 LPI 代表着一个形状的“ ” 。 每个表面代码是一个隐含的代码, 代表着一个在表面的模型, 使我们能够灵活使用形状的内在属性或额外的表面属性。 最终, LPI 可以重建我们的形状和多层的缩缩缩缩缩定义 。