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Neural varifolds: an aggregate representation for quantifying the geometry of point clouds

Neural varifolds: an aggregate representation for quantifying the geometry of point clouds
Neural varifolds: an aggregate representation for quantifying the geometry of point clouds

Point clouds are popular 3D representations for real-life objects (such as in LiDAR and Kinect) due to their detailed and compact representation of surface-based geometry. Recent approaches characterise the geometry of point clouds by bringing deep learning based techniques together with geometric fidelity metrics such as optimal transportation costs (e.g., Chamfer and Wasserstein metrics). In this paper, we propose a new surface geometry characterisation within this realm, namely a neural varifold representation of point clouds. Here, the surface is represented as a measure/distribution over both point positions and tangent spaces of point clouds. The varifold representation quantifies not only the surface geometry of point clouds through the manifold-based representation, but also subtle geometric consistencies on the surface due to the combined product space. This study proposes neural varifold algorithms to compute the varifold norm between two point clouds using neural networks on point clouds and their neural tangent kernel representations. The proposed neural varifold is evaluated on three different sought-after tasks – shape matching, few-shot shape classification, and shape reconstruction. Detailed evaluation and comparison to the state-of-the-art methods demonstrate that the proposed versatile neural varifold is superior in shape matching and few-shot shape classification, and is competitive for shape reconstruction. The public code is available at https://github.com/jl626/neural_varifold.

Lee, Juheon
cd382ebf-0bcc-47b8-a60d-68c6540d31bb
Cai, Xiaohao
de483445-45e9-4b21-a4e8-b0427fc72cee
Schönlieb, Carola Bibiane
418527c2-3375-4c0d-919f-ce89a6989bc9
Masnou, Simon
d114f8bb-5ddc-46e1-a35f-302c7fa778a2
Lee, Juheon
cd382ebf-0bcc-47b8-a60d-68c6540d31bb
Cai, Xiaohao
de483445-45e9-4b21-a4e8-b0427fc72cee
Schönlieb, Carola Bibiane
418527c2-3375-4c0d-919f-ce89a6989bc9
Masnou, Simon
d114f8bb-5ddc-46e1-a35f-302c7fa778a2

Lee, Juheon, Cai, Xiaohao, Schönlieb, Carola Bibiane and Masnou, Simon (2025) Neural varifolds: an aggregate representation for quantifying the geometry of point clouds. Transactions on Machine Learning Research, June.

Record type: Article

Abstract

Point clouds are popular 3D representations for real-life objects (such as in LiDAR and Kinect) due to their detailed and compact representation of surface-based geometry. Recent approaches characterise the geometry of point clouds by bringing deep learning based techniques together with geometric fidelity metrics such as optimal transportation costs (e.g., Chamfer and Wasserstein metrics). In this paper, we propose a new surface geometry characterisation within this realm, namely a neural varifold representation of point clouds. Here, the surface is represented as a measure/distribution over both point positions and tangent spaces of point clouds. The varifold representation quantifies not only the surface geometry of point clouds through the manifold-based representation, but also subtle geometric consistencies on the surface due to the combined product space. This study proposes neural varifold algorithms to compute the varifold norm between two point clouds using neural networks on point clouds and their neural tangent kernel representations. The proposed neural varifold is evaluated on three different sought-after tasks – shape matching, few-shot shape classification, and shape reconstruction. Detailed evaluation and comparison to the state-of-the-art methods demonstrate that the proposed versatile neural varifold is superior in shape matching and few-shot shape classification, and is competitive for shape reconstruction. The public code is available at https://github.com/jl626/neural_varifold.

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Published date: 18 June 2025

Identifiers

Local EPrints ID: 508042
URI: http://eprints.soton.ac.uk/id/eprint/508042
PURE UUID: 4cf72db2-4878-4d18-b06c-ecb3f8fd31e0
ORCID for Xiaohao Cai: ORCID iD orcid.org/0000-0003-0924-2834

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Date deposited: 12 Jan 2026 17:43
Last modified: 13 Jan 2026 03:01

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Contributors

Author: Juheon Lee
Author: Xiaohao Cai ORCID iD
Author: Carola Bibiane Schönlieb
Author: Simon Masnou

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