Purrception: Variational Flow Matching for Vector-Quantized Image Generation
Oct 1, 2025·
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Răzvan-Andrei Matişan
Vincent Tao Hu
Grigory Bartosh
Björn Ommer
Cees GM Snoek
Max Welling
Jan-Willem Van De Meent
Mohammad Mahdi Derakhshani
Equal contribution

Floor Eijkelboom
Equal contribution
·
0 min read
Abstract
We introduce Purrception, a variational flow matching approach for vector-quantized image generation that provides explicit categorical supervision while maintaining continuous transport dynamics. Our method adapts Variational Flow Matching to vector-quantized latents by learning categorical posteriors over codebook indices while computing velocity fields in the continuous embedding space. This combines the geometric awareness of continuous methods with the discrete supervision of categorical approaches, enabling uncertainty quantification over plausible codes and temperature-controlled generation. We evaluate Purrception on ImageNet-1k 256x256 generation. Training converges faster than both continuous flow matching and discrete flow matching baselines while achieving competitive FID scores with state-of-the-art models. This demonstrates that Variational Flow Matching can effectively bridge continuous transport and discrete supervision for improved training efficiency in image generation.
Publication
arXiv preprint