Systematic multi-variable experiments show panoptic segmentation yields poorer uncertainty quality than semantic, with high variance across datasets and backbones, limited value from time-series samples, calibration gains from sample diversity, and conditional benefits from ensembles over single det
Sampling-based Uncertainty Estimation for an Instance Seg- mentation Network.arXiv preprint arXiv:2305.14977, 2023
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U-SEG: Uncertainty in SEGmentation -- A systematic multi-variable exploration
Systematic multi-variable experiments show panoptic segmentation yields poorer uncertainty quality than semantic, with high variance across datasets and backbones, limited value from time-series samples, calibration gains from sample diversity, and conditional benefits from ensembles over single det