Efficient Spatially Sparse Inference for Conditional GANs and Diffusion Models
–Neural Information Processing Systems
During image editing, existing deep generative models tend to re-synthesize the entire output from scratch, including the unedited regions. This leads to a significant waste of computation, especially for minor editing operations. In this work, we present Spatially Sparse Inference (SSI), a general-purpose technique that selectively performs computation for edited regions and accelerates various generative models, including both conditional GANs and diffusion models.
Neural Information Processing Systems
Aug-18-2025, 05:30:09 GMT
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