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Scene-Centric Unsupervised Panoptic Segmentation

2025-04-02CVPR 2025Code Available2· sign in to hype

Oliver Hahn, Christoph Reich, Nikita Araslanov, Daniel Cremers, Christian Rupprecht, Stefan Roth

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Abstract

Unsupervised panoptic segmentation aims to partition an image into semantically meaningful regions and distinct object instances without training on manually annotated data. In contrast to prior work on unsupervised panoptic scene understanding, we eliminate the need for object-centric training data, enabling the unsupervised understanding of complex scenes. To that end, we present the first unsupervised panoptic method that directly trains on scene-centric imagery. In particular, we propose an approach to obtain high-resolution panoptic pseudo labels on complex scene-centric data, combining visual representations, depth, and motion cues. Utilizing both pseudo-label training and a panoptic self-training strategy yields a novel approach that accurately predicts panoptic segmentation of complex scenes without requiring any human annotations. Our approach significantly improves panoptic quality, e.g., surpassing the recent state of the art in unsupervised panoptic segmentation on Cityscapes by 9.4% points in PQ.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
BDD100K valCUPS (27 pseudo-classes)PQ19.9Unverified
BDD100K valCUPS (40 pseudo-classes)PQ21.9Unverified
BDD100K valCUPS (54 pseudo-classes)PQ21.8Unverified
CityscapesCUPS (54 pseudo-classes)PQ30.6Unverified
CityscapesCUPS (40 pseudo-classes)PQ30.3Unverified
CityscapesCUPS (27 pseudo-classes)PQ27.8Unverified
KITTICUPS (54 pseudo-classes)PQ28.5Unverified
KITTICUPS (40 pseudo-classes)PQ28.1Unverified
KITTICUPS (27 pseudo-classes)PQ25.5Unverified
MUSES: MUlti-SEnsor Semantic perception datasetCUPS (27 pseudo-classes)PQ24.4Unverified
MUSES: MUlti-SEnsor Semantic perception datasetCUPS (40 pseudo-classes)PQ28.2Unverified
MUSES: MUlti-SEnsor Semantic perception datasetCUPS (54 pseudo-classes)PQ22.8Unverified
Waymo Open DatasetCUPS (27 pseudo-classes)PQ26.4Unverified
Waymo Open DatasetCUPS (40 pseudo-classes)PQ27.2Unverified
Waymo Open DatasetCUPS (54 pseudo-classes)PQ27.3Unverified

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