AI RESEARCH
Diffusion Image Generation with Explicit Modeling of Data Manifold Geometry
arXiv CS.AI
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ArXi:2606.00094v1 Announce Type: cross Image generative models aim to sample data points from the underlying data manifold, a task that requires learning and decoding a dense, low-dimensional, and compact parameterization space. To achieve this, we propose the Data Manifold-aware Image diffusioN moDel (MIND), a novel framework that explicitly models manifold geometry by integrating discrete patch tokenization into the score function of a continuous diffusion model.