Point cloud upsampling aims to generate dense point clouds from given sparse ones, which is a challenging task due to the irregular and unordered nature of point sets. To address this issue, we present a novel deep learning-based model, called PU-Flow, which incorporates normalizing flows and weight prediction techniques to produce dense points uniformly distributed on the underlying surface. Specifically, we exploit the invertible characteristics of normalizing flows to transform points between Euclidean and latent spaces and formulate the upsampling process as ensemble of neighbouring points in a latent space, where the ensemble weights are adaptively learned from local geometric context. Extensive experiments show that our method is competitive and, in most test cases, it outperforms state-of-the-art methods in terms of reconstruction quality, proximity-to-surface accuracy, and computation efficiency. The source code will be publicly available at https://github.com/unknownue/pu-flow.
翻译:为了解决这一问题,我们提出了一个全新的深层次学习模式,称为PU-Flow,其中纳入了正常流动和重量预测技术,以产生在底层地表上统一分布的密度点。具体地说,我们利用正常流动的不可忽略的特征,将欧克利底和潜在空间之间的点转换为欧洲和潜在空间之间的点,并将高采样过程设计成潜在空间相邻点的组合,使共同体重量从当地几何环境中适应性地学。广泛的实验表明,我们的方法具有竞争力,在多数试验中,在重建质量、近地精确度和计算效率方面优于最先进的方法。源代码将在https://github.com/unnodnue/pu-plow上公开提供。