We propose a novel normal estimation method called HSurf-Net, which can accurately predict normals from point clouds with noise and density variations. Previous methods focus on learning point weights to fit neighborhoods into a geometric surface approximated by a polynomial function with a predefined order, based on which normals are estimated. However, fitting surfaces explicitly from raw point clouds suffers from overfitting or underfitting issues caused by inappropriate polynomial orders and outliers, which significantly limits the performance of existing methods. To address these issues, we introduce hyper surface fitting to implicitly learn hyper surfaces, which are represented by multi-layer perceptron (MLP) layers that take point features as input and output surface patterns in a high dimensional feature space. We introduce a novel space transformation module, which consists of a sequence of local aggregation layers and global shift layers, to learn an optimal feature space, and a relative position encoding module to effectively convert point clouds into the learned feature space. Our model learns hyper surfaces from the noise-less features and directly predicts normal vectors. We jointly optimize the MLP weights and module parameters in a data-driven manner to make the model adaptively find the most suitable surface pattern for various points. Experimental results show that our HSurf-Net achieves the state-of-the-art performance on the synthetic shape dataset, the real-world indoor and outdoor scene datasets. The code, data and pretrained models are publicly available.
翻译:我们提出了一种叫HSurf-Net的新颖的正常估计方法,它可以精确地从点云中预测有噪音和密度变化的正常现象。以前的方法侧重于学习点重量,将附近地区适应到一个以预定的顺序为根据的多面函数所近似于的几何表面,以预定义的正常情况为基础。然而,原始点云层的装配表面明显地存在因不适当的多元命令和外部线而导致的过度装配或不适当问题,从而大大限制了现有方法的性能。为了解决这些问题,我们引入了超强表面适应,以隐含地学习超高度表面,这些超度表面由多层的透视谱(MLP)层代表,在高维特征空间中,将点特征作为输入和输出的表面形态模式。我们引入了一个新的空间变异模块,由当地组群层和全球变化层组成,以学习最佳的地貌空间,以及一个相对位置的加固模块,以有效地将点云转换成学习的特性空间空间。我们模型从无噪音的特性特性中学习超表面和直接预测正常的矢量矢量。我们共同优化了MLP重量和模模型,在最能的模型中,在最能的模型中,在可调化的模型中,在可调制成的模型中可以使数据状态的表面数据模型显示的模型的轨道上,以适应性能性能性能显示。