ISSUE 02FRIDAY, JUNE 5, 2026PRINT 06.2026

GEOMDIGEST

THE INSIDER PUBLICATION FOR COMPUTATIONAL GEOMETRY & DESIGN

GEOMDIGEST / PAPERS / NAM-NEURAL-ADJOINT-MAPS-FOR-REFINING-SHAPE-CORRESPONDENCES-2025-673776
No code

NAM: Neural Adjoint Maps for refining shape correspondences

2025 / ACM Transactions on Graphics / DOI 10.1145/3730943

In this paper, we propose a novel approach to refine 3D shape correspondences by leveraging multi-layer perceptions within the framework of functional maps. Central to our contribution is the concept of Neural Adjoint Maps , a novel neural representation that generalizes the traditional solution of functional maps for estimating correspondence between manifolds. Fostering our neural representation, we propose an iterative algorithm explicitly designed to enhance the precision and robustness of shape correspondence across diverse modalities such as meshes and point clouds. By harnessing the expressive power of non-linear solutions, our method captures intricate geometric details and feature correspondences that conventional linear approaches often overlook. Extensive evaluations on standard benchmarks and challenging datasets demonstrate that our approach achieves state-of-the-art accuracy for both isometric and non-isometric meshes and for point clouds where traditional methods frequently struggle. Moreover, we show the versatility of our method in tasks such as signal and neural field transfer, highlighting its broad applicability to domains including computer graphics, medical imaging, and other fields demanding precise transfer of information among 3D shapes. Our work sets a new standard for shape correspondence refinement, offering robust tools across various applications.

0
Citations
43
References
0
Implementations
No evidence
Repro status

Reproducibility Dossier

No evidenceConfidence: automated / checked Apr 2026

GEOMDIGEST treats reproducibility as an evidence trail: public artifacts, documentation, data, packaging, archival stability, and verification checks. Numeric scores are only exposed for audited records; public pages prioritize the evidence itself.

0
Evidence
0
Verified
not yet
Code
not yet
Data
not yet
Docs
not yet
Build checks
No public reproducibility evidence has been attached yet. Editors can add code, data, documentation, package, demo, benchmark, archive, or supplement links.
Methodology
Improve this dossier

Implementation Index

No implementations indexed yet

This paper is in the knowledge graph, but we have not attached a runnable artifact yet.

Citation Lineage

Lineage not indexed yet

This paper is in the knowledge graph, but no in-corpus reference or citing-paper links have been attached yet.