论文标题
基于关键球的高保真3D模型压缩
High-fidelity 3D Model Compression based on Key Spheres
论文作者
论文摘要
近年来,神经签名的距离函数(SDF)已成为3D模型最有效的表示方法之一。通过在3D空间中学习连续的SDF,神经网络可以预测从给定查询空间到其最接近对象表面的距离,它们的正面和负迹象分别表示对象的内部和外部。训练每个3D模型的特定网络,该网络单独嵌入其形状,可以通过存储更少的网络(甚至可能是潜在)参数来实现对象的压缩表示。因此,可以通过网络推断和表面恢复进行重建。在本文中,我们建议使用明确的密钥球作为输入提出一个SDF预测网络。关键球是从对象的内部空间中提取的,其中心的SDF值相对较大,或者位于必不可少的位置。通过输入多个暗示局部形状的多个领域的空间信息,提出的方法可以通过可忽略不计的存储成本显着提高重建精度。与以前的工作相比,我们的方法实现了高保真和高压3D对象编码和重建。在三个数据集上进行的实验验证了我们方法的出色性能。
In recent years, neural signed distance function (SDF) has become one of the most effective representation methods for 3D models. By learning continuous SDFs in 3D space, neural networks can predict the distance from a given query space point to its closest object surface,whose positive and negative signs denote inside and outside of the object, respectively. Training a specific network for each 3D model, which individually embeds its shape, can realize compressed representation of objects by storing fewer network (and possibly latent) parameters. Consequently, reconstruction through network inference and surface recovery can be achieved. In this paper, we propose an SDF prediction network using explicit key spheres as input. Key spheres are extracted from the internal space of objects, whose centers either have relatively larger SDF values (sphere radii), or are located at essential positions. By inputting the spatial information of multiple spheres which imply different local shapes, the proposed method can significantly improve the reconstruction accuracy with a negligible storage cost. Compared to previous works, our method achieves the high-fidelity and high-compression 3D object coding and reconstruction. Experiments conducted on three datasets verify the superior performance of our method.