Class-Partitioned VQ-VAE and Latent Flow Matching for Point Cloud Scene Generation

Authors

  • Dasith de Silva Edirimuni The University of Western Australia
  • Ajmal Saeed Mian The University of Western Australia

DOI:

https://doi.org/10.1609/aaai.v40i5.37352

Abstract

Most 3D scene generation methods are limited to only generating object bounding box parameters while newer diffusion methods also generate class labels and latent features. Using object size or latent feature, they then retrieve objects from a predefined database. For complex scenes of varied, multi-categorical objects, diffusion-based latents cannot be effectively decoded by current autoencoders into the correct point cloud objects which agree with target classes. We introduce a Class-Partitioned Vector Quantized Variational Autoencoder (CPVQ-VAE) that is trained to effectively decode object latent features, by employing a pioneering class-partitioned codebook where codevectors are labeled by class. To address the problem of codebook collapse, we propose a class-aware running average update which reinitializes dead codevectors within each partition. During inference, object features and class labels, both generated by a Latent-space Flow Matching Model (LFMM) designed specifically for scene generation, are consumed by the CPVQ-VAE. The CPVQ-VAE's class-aware inverse look-up then maps generated latents to codebook entries that are decoded to class-specific point cloud shapes. Thereby, we achieve pure point cloud generation without relying on an external objects database for retrieval. Extensive experiments reveal that our method reliably recovers plausible point cloud scenes, with up to 70.4% and 72.3% reduction in Chamfer and Point2Mesh errors on complex living room scenes.

Published

2026-03-14

How to Cite

de Silva Edirimuni, D., & Mian, A. S. (2026). Class-Partitioned VQ-VAE and Latent Flow Matching for Point Cloud Scene Generation. Proceedings of the AAAI Conference on Artificial Intelligence, 40(5), 3542–3550. https://doi.org/10.1609/aaai.v40i5.37352

Issue

Section

AAAI Technical Track on Computer Vision II