Graphical Models (Jun 2024)

IGF-Fit: Implicit gradient field fitting for point cloud normal estimation

  • Bowen Lyu,
  • Li-Yong Shen,
  • Chun-Ming Yuan

Journal volume & issue
Vol. 133
p. 101214

Abstract

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We introduce IGF-Fit, a novel method for estimating surface normals from point clouds with varying noise and density. Unlike previous approaches that rely on point-wise weights and explicit representations, IGF-Fit employs a network that learns an implicit representation and uses derivatives to predict normals. The input patch serves as both a shape latent vector and query points for fitting the implicit representation. To handle noisy input, we introduce a novel noise transformation module with a training strategy for noise classification and latent vector bias prediction. Our experiments on synthetic and real-world scan datasets demonstrate the effectiveness of IGF-Fit, achieving state-of-the-art performance on both noise-free and density-varying data.

Keywords