Computer Science > Computer Vision and Pattern Recognition
[Submitted on 31 Jul 2023 (v1), last revised 20 Aug 2024 (this version, v5)]
Title:Investigating and Improving Latent Density Segmentation Models for Aleatoric Uncertainty Quantification in Medical Imaging
View PDF HTML (experimental)Abstract:Data uncertainties, such as sensor noise, occlusions or limitations in the acquisition method can introduce irreducible ambiguities in images, which result in varying, yet plausible, semantic hypotheses. In Machine Learning, this ambiguity is commonly referred to as aleatoric uncertainty. In image segmentation, latent density models can be utilized to address this problem. The most popular approach is the Probabilistic U-Net (PU-Net), which uses latent Normal densities to optimize the conditional data log-likelihood Evidence Lower Bound. In this work, we demonstrate that the PU-Net latent space is severely sparse and heavily under-utilized. To address this, we introduce mutual information maximization and entropy-regularized Sinkhorn Divergence in the latent space to promote homogeneity across all latent dimensions, effectively improving gradient-descent updates and latent space informativeness. Our results show that by applying this on public datasets of various clinical segmentation problems, our proposed methodology receives up to 11% performance gains compared against preceding latent variable models for probabilistic segmentation on the Hungarian-Matched Intersection over Union. The results indicate that encouraging a homogeneous latent space significantly improves latent density modeling for medical image segmentation.
Submission history
From: Amaan Valiuddin [view email][v1] Mon, 31 Jul 2023 14:09:03 UTC (4,238 KB)
[v2] Tue, 15 Aug 2023 14:28:02 UTC (4,238 KB)
[v3] Tue, 14 Nov 2023 16:06:56 UTC (4,366 KB)
[v4] Tue, 21 May 2024 17:36:50 UTC (3,153 KB)
[v5] Tue, 20 Aug 2024 11:47:44 UTC (3,041 KB)
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