SegDiff: Image Segmentation with Diffusion Probabilistic Models
About
Diffusion Probabilistic Methods are employed for state-of-the-art image generation. In this work, we present a method for extending such models for performing image segmentation. The method learns end-to-end, without relying on a pre-trained backbone. The information in the input image and in the current estimation of the segmentation map is merged by summing the output of two encoders. Additional encoding layers and a decoder are then used to iteratively refine the segmentation map, using a diffusion model. Since the diffusion model is probabilistic, it is applied multiple times, and the results are merged into a final segmentation map. The new method produces state-of-the-art results on the Cityscapes validation set, the Vaihingen building segmentation benchmark, and the MoNuSeg dataset.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-organ Segmentation | BTCV (test) | Spl95.4 | 55 | |
| Abdominal multi-organ segmentation | BTCV | Spleen95.4 | 35 | |
| Segmentation | BraTs Brain-Tumor 2021 | Dice85.7 | 25 | |
| Segmentation | ISIC Melanoma 2019 | Dice87.3 | 25 | |
| Segmentation | TNMIX | Dice81.9 | 21 | |
| Segmentation | REFUGE2 Optic-Cup | Dice82.5 | 21 | |
| Segmentation | REFUGE2 Optic-Disc | Dice92.6 | 21 | |
| Prostate Segmentation | ProstateX | DSC0.835 | 20 | |
| Medical Image Segmentation | BraTS 2021 | Dice89.3 | 15 | |
| Prostate Segmentation | CCH-TRUSPS | DSC85.4 | 14 |