PCA-Enhanced Probabilistic U-Net for Effective Ambiguous Medical Image Segmentation
arXiv cs.CV / 3/13/2026
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Key Points
- The paper introduces PCA-Enhanced Probabilistic U-Net (PEP U-Net) for Ambiguous Medical Image Segmentation to better handle inherent uncertainties from image ambiguities, noise, and subjective annotations.
- The method uses PCA to reduce dimensionality in the posterior network, mitigating redundancy and improving computational efficiency, and employs an inverse PCA operation to reconstruct critical information and enhance latent space capacity.
- Compared with conventional generative models, PEP U-Net preserves diverse segmentation hypotheses while achieving a better balance between segmentation accuracy and predictive variability.
- The work advances generative modeling in medical image segmentation by combining PCA-based efficiency with improved representational power, enabling more robust and varied segmentation outputs.
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