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Analysing Diffusion Segmentation for Medical Images

Authors :
Öttl, Mathias
Mei, Siyuan
Wilm, Frauke
Steenpass, Jana
Rübner, Matthias
Hartmann, Arndt
Beckmann, Matthias
Fasching, Peter
Maier, Andreas
Erber, Ramona
Breininger, Katharina
Publication Year :
2024

Abstract

Denoising Diffusion Probabilistic models have become increasingly popular due to their ability to offer probabilistic modeling and generate diverse outputs. This versatility inspired their adaptation for image segmentation, where multiple predictions of the model can produce segmentation results that not only achieve high quality but also capture the uncertainty inherent in the model. Here, powerful architectures were proposed for improving diffusion segmentation performance. However, there is a notable lack of analysis and discussions on the differences between diffusion segmentation and image generation, and thorough evaluations are missing that distinguish the improvements these architectures provide for segmentation in general from their benefit for diffusion segmentation specifically. In this work, we critically analyse and discuss how diffusion segmentation for medical images differs from diffusion image generation, with a particular focus on the training behavior. Furthermore, we conduct an assessment how proposed diffusion segmentation architectures perform when trained directly for segmentation. Lastly, we explore how different medical segmentation tasks influence the diffusion segmentation behavior and the diffusion process could be adapted accordingly. With these analyses, we aim to provide in-depth insights into the behavior of diffusion segmentation that allow for a better design and evaluation of diffusion segmentation methods in the future.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.14440
Document Type :
Working Paper