Accelerating Diffusion Models via Pre-segmentation Diffusion Sampling for Medical Image Segmentation
This addresses inefficiency in medical image segmentation for healthcare applications, but it is incremental as it builds on existing diffusion models.
The paper tackles the slow inference of diffusion models for medical image segmentation by proposing PD-DDPM, which uses pre-segmentation results to start from noisy predictions and reduce reverse steps, achieving better segmentation results with significantly fewer steps.
Based on the Denoising Diffusion Probabilistic Model (DDPM), medical image segmentation can be described as a conditional image generation task, which allows to compute pixel-wise uncertainty maps of the segmentation and allows an implicit ensemble of segmentations to boost the segmentation performance. However, DDPM requires many iterative denoising steps to generate segmentations from Gaussian noise, resulting in extremely inefficient inference. To mitigate the issue, we propose a principled acceleration strategy, called pre-segmentation diffusion sampling DDPM (PD-DDPM), which is specially used for medical image segmentation. The key idea is to obtain pre-segmentation results based on a separately trained segmentation network, and construct noise predictions (non-Gaussian distribution) according to the forward diffusion rule. We can then start with noisy predictions and use fewer reverse steps to generate segmentation results. Experiments show that PD-DDPM yields better segmentation results over representative baseline methods even if the number of reverse steps is significantly reduced. Moreover, PD-DDPM is orthogonal to existing advanced segmentation models, which can be combined to further improve the segmentation performance.