Structuring Uncertainty for Fine-Grained Sampling in Stochastic Segmentation Networks
–Neural Information Processing Systems
In the context of state-of-the-art stochastic segmentation networks (SSNs), we solve this issue by dismantling the overall predicted uncertainty into smaller uncertainty components. We obtain them directly from the low-rank Gaussian distribution for the logits in the network head of SSNs, based on a previously unconsidered view of this distribution as a factor model.
Neural Information Processing Systems
Nov-15-2025, 19:58:29 GMT
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