MedSegDiffNCA: Diffusion Models With Neural Cellular Automata for Skin Lesion Segmentation
Denoising Diffusion Models (DDMs) are widely used for high-quality image generation and medical image segmentation but often rely on Unet-based architectures, leading to high computational overhead, especially with high-resolution images. This work proposes three NCA-based improvements for diffusion...
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Zusammenfassung: | Denoising Diffusion Models (DDMs) are widely used for high-quality image
generation and medical image segmentation but often rely on Unet-based
architectures, leading to high computational overhead, especially with
high-resolution images. This work proposes three NCA-based improvements for
diffusion-based medical image segmentation. First, Multi-MedSegDiffNCA uses a
multilevel NCA framework to refine rough noise estimates generated by lower
level NCA models. Second, CBAM-MedSegDiffNCA incorporates channel and spatial
attention for improved segmentation. Third, MultiCBAM-MedSegDiffNCA combines
these methods with a new RGB channel loss for semantic guidance. Evaluations on
Lesion segmentation show that MultiCBAM-MedSegDiffNCA matches Unet-based model
performance with dice score of 87.84% while using 60-110 times fewer
parameters, offering a more efficient solution for low resource medical
settings. |
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DOI: | 10.48550/arxiv.2501.02447 |