SOTAVerified

Uncertainty-Aware Panoptic Segmentation

The ternary difficulty levels assigned to each pixel during the annotation of MUSES enable a novel task: uncertainty-aware panoptic segmen- tation. In this task, a panoptic segmentation model is compensated for errors in difficult image regions if it predicts the difficulty level correctly. To incorporate this idea into evaluation, we introduce the uncertainty-aware panoptic quality (UPQ) metric, an extension of panoptic quality.

Papers

Showing 14 of 4 papers

TitleStatusHype
MUSES: The Multi-Sensor Semantic Perception Dataset for Driving under UncertaintyCode1
ProPanDL: A Modular Architecture for Uncertainty-Aware Panoptic Segmentation0
Uncertainty-aware LiDAR Panoptic SegmentationCode0
Uncertainty-aware Panoptic SegmentationCode1
Show:102550

No leaderboard results yet.