Abstract
This paper describes an efficient algorithm for solving noisy linear inverse problems using pretrained diffusion models. Extending the paradigm of denoising diffusion implicit models (DDIM), we propose constrained diffusion implicit models (CDIM) that modify the diffusion updates to enforce a constraint upon the final output. For noiseless inverse problems, CDIM exactly satisfies the constraints; in the noisy case, we generalize CDIM to satisfy an exact constraint on the residual distribution of the noise. Experiments across a variety of tasks and metrics show strong performance of CDIM, with analogous inference acceleration to unconstrained DDIM: 10 to 50 times faster than previous conditional diffusion methods. We demonstrate the versatility of our approach on many problems including super-resolution, denoising, inpainting, deblurring, and 3D point cloud reconstruction.
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We introduce Constrained Diffusion Implicit Models (CDIM), which solves noisy inverse problems with diffusion models. Our method is 10-50x faster than existing state of the art methods (3 second inference). We also guarantee exact recovery of partial observations. or in the noisy case, we optimize a KL divergence to give exactness on the residual noise distribution. This also lets us handle non-gaussian observation noise, like Poisson noise.
Check out the Gradio Demo! https://huggingface.co/spaces/vivjay30/cdim
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