LGApr 27

GeoEdit: Local Frames for Fast, Training-Free On-Manifold Editing in Diffusion Models

arXiv:2604.2423865.9
Predicted impact top 26% in LG · last 90 daysOriginality Incremental advance
AI Analysis

For users of diffusion models, this provides a fast, training-free editing method that maintains fidelity and enables interactive continuous adjustments, though it is incremental over existing editing approaches.

GeoEdit enables training-free, on-manifold editing in diffusion models by estimating a local tangent space from perturbed samples, allowing fine-grained edits without full re-diffusion. The method achieves smooth semantic traversals and effective CLIP-guided optimization with continuous edit strength control.

Diffusion models are a leading paradigm for data generation, but training-free editing typically re-runs the full denoising trajectory for every edit strength, making iterative refinement expensive. To address this issue, we instead edit near the data manifold, where small local updates can replace repeated re-synthesis. To enable this, we estimate a local manifold tangent space directly from perturbed samples and prove that this sample-based estimator closely approximates the true tangent. Building on this guarantee, we devise a Jacobian-free algorithm that constructs a tangent frame via small perturbations to the initial noise and alternates small tangent moves with diffusion-based projections. Updates within this frame follow principled on-manifold directions while suppressing off-manifold drift, enabling fine-grained edits without full re-diffusion or additional training. Edit strength is controlled by the number of steps for rapid, continuous adjustments that preserve fidelity and plug into existing samplers. Empirically, the resulting tangent directions yield smooth, semantic unsupervised traversals and effective CLIP-guided optimization, demonstrating practical interactive continuous editing.

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