Unsupervised Semantic Segmentation
Unsupervised semantic segmentation is an important task in computer vision that aims to classify each pixel in an image through model learning without relying on annotated ground truth data. The goal of this task is to enable the model to autonomously recognize and distinguish different object categories in the image, thereby achieving a fine-grained understanding of the image content. Unsupervised semantic segmentation holds significant value in applications such as autonomous driving, medical image analysis, and scene understanding, as it can substantially reduce the cost and time associated with manual annotation.
ACDC (Adverse Conditions Dataset with Correspondences)
Segmenter ViT-S/16
Cityscapes test
GraPix
Cityscapes val
Segmenter ViT-S/16
COCO-All
COCO-Persons
COCO-Stuff-15
IIC
COCO-Stuff-171
CAUSE-TR (ViT-S/8)
COCO-Stuff-27
DynaSeg - FSF (ResNet-18 FPN)
COCO-Stuff-3
IIC
COCO-Stuff-81
CAUSE-TR (ViT-S/8)
Dark Zurich
ImageNet-S
ImageNet-S-300
PASS
ImageNet-S-50
PASS
Nighttime Driving
PASCAL VOC 2012 val
CAUSE (ViT-B/8)
Potsdam-3
PriMaPs-EM+HP (DINO ViT-B/8)
SUIM
DatUS (ViT-B/8) + OC