LGCVNCSep 18, 2025

Kuramoto Orientation Diffusion Models

arXiv:2509.15328v23 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work addresses a domain-specific challenge in generative modeling for images with coherent angular patterns, offering a novel approach inspired by biological synchronization.

The paper tackled the problem of modeling orientation-rich images like fingerprints and textures by proposing a score-based generative model using stochastic Kuramoto dynamics, achieving competitive results on general benchmarks and significant quality improvements on orientation-dense datasets.

Orientation-rich images, such as fingerprints and textures, often exhibit coherent angular directional patterns that are challenging to model using standard generative approaches based on isotropic Euclidean diffusion. Motivated by the role of phase synchronization in biological systems, we propose a score-based generative model built on periodic domains by leveraging stochastic Kuramoto dynamics in the diffusion process. In neural and physical systems, Kuramoto models capture synchronization phenomena across coupled oscillators -- a behavior that we re-purpose here as an inductive bias for structured image generation. In our framework, the forward process performs \textit{synchronization} among phase variables through globally or locally coupled oscillator interactions and attraction to a global reference phase, gradually collapsing the data into a low-entropy von Mises distribution. The reverse process then performs \textit{desynchronization}, generating diverse patterns by reversing the dynamics with a learned score function. This approach enables structured destruction during forward diffusion and a hierarchical generation process that progressively refines global coherence into fine-scale details. We implement wrapped Gaussian transition kernels and periodicity-aware networks to account for the circular geometry. Our method achieves competitive results on general image benchmarks and significantly improves generation quality on orientation-dense datasets like fingerprints and textures. Ultimately, this work demonstrates the promise of biologically inspired synchronization dynamics as structured priors in generative modeling.

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