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Main Authors: Olearo, Lorenzo, Viganò, Giulio, Baieri, Daniele, Maggioli, Filippo, Melzi, Simone
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.13431
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author Olearo, Lorenzo
Viganò, Giulio
Baieri, Daniele
Maggioli, Filippo
Melzi, Simone
author_facet Olearo, Lorenzo
Viganò, Giulio
Baieri, Daniele
Maggioli, Filippo
Melzi, Simone
contents We introduce a novel neural representation for maps between 3D shapes based on flow-matching models, which is computationally efficient and supports cross-representation shape matching without large-scale training or data-driven procedures. 3D shapes are represented as the probability distribution induced by a continuous and invertible flow mapping from a fixed anchor distribution. Given a source and a target shape, the composition of the inverse flow (source to anchor) with the forward flow (anchor to target), we continuously map points between the two surfaces. By encoding the shapes with a pointwise task-tailored embedding, this construction provides an invertible and modality-agnostic representation of maps between shapes across point clouds, meshes, signed distance fields (SDFs), and volumetric data. The resulting representation consistently achieves high coverage and accuracy across diverse benchmarks and challenging settings in shape matching. Beyond shape matching, our framework shows promising results in other tasks, including UV mapping and registration of raw point cloud scans of human bodies.
format Preprint
id arxiv_https___arxiv_org_abs_2511_13431
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FUSE: A Flow-based Mapping Between Shapes
Olearo, Lorenzo
Viganò, Giulio
Baieri, Daniele
Maggioli, Filippo
Melzi, Simone
Computer Vision and Pattern Recognition
68U05
I.3.5; I.2.6
We introduce a novel neural representation for maps between 3D shapes based on flow-matching models, which is computationally efficient and supports cross-representation shape matching without large-scale training or data-driven procedures. 3D shapes are represented as the probability distribution induced by a continuous and invertible flow mapping from a fixed anchor distribution. Given a source and a target shape, the composition of the inverse flow (source to anchor) with the forward flow (anchor to target), we continuously map points between the two surfaces. By encoding the shapes with a pointwise task-tailored embedding, this construction provides an invertible and modality-agnostic representation of maps between shapes across point clouds, meshes, signed distance fields (SDFs), and volumetric data. The resulting representation consistently achieves high coverage and accuracy across diverse benchmarks and challenging settings in shape matching. Beyond shape matching, our framework shows promising results in other tasks, including UV mapping and registration of raw point cloud scans of human bodies.
title FUSE: A Flow-based Mapping Between Shapes
topic Computer Vision and Pattern Recognition
68U05
I.3.5; I.2.6
url https://arxiv.org/abs/2511.13431