MorphoFlow: Sparse-Supervised Generative Shape Modeling with Adaptive Latent Relevance
Mokshagna Sai Teja Karanam, Tushar Kataria, Shireen Elhabian

TL;DR
MorphoFlow is a novel generative shape modeling framework that learns compact, probabilistic 3D anatomical representations from sparse annotations, integrating neural implicit representations, autoregressive flows, and adaptive relevance weighting.
Contribution
It introduces a sparse supervised, resolution-agnostic shape modeling approach with adaptive latent relevance, enabling flexible, high-quality anatomical shape synthesis from limited data.
Findings
Accurately reconstructs high-resolution shapes from sparse inputs.
Recovers structured anatomical variation consistent with population data.
Supports uncertainty quantification and plausible shape generation.
Abstract
Statistical shape modeling (SSM) is central to population level analysis of anatomical variability, yet most existing approaches rely on densely annotated segmentations and fixed latent representations. These requirements limit scalability and reduce flexibility when modeling complex anatomical variation. We introduce MorphoFlow, a sparse supervised generative shape modeling framework that learns compact probabilistic shape representations directly from sparse surface annotations. MorphoFlow integrates neural implicit shape representations with an autodecoder formulation and autoregressive normalizing flows to learn an expressive probabilistic density over the latent shape space. The neural implicit representation enables resolution-agnostic modeling of 3D anatomy, while the autodecoder formulation supports direct optimization of per-instance latent codes under sparse supervision. The…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
