Domain Generalization On Gta5 To Cityscapes
Metriken
mIoU
Ergebnisse
Leistungsergebnisse verschiedener Modelle zu diesem Benchmark
| Paper Title | ||
|---|---|---|
| tqdm (EVA02-CLIP-L) | 68.88 | Textual Query-Driven Mask Transformer for Domain Generalized Segmentation |
| Rein | 66.4 | Stronger, Fewer, & Superior: Harnessing Vision Foundation Models for Domain Generalized Semantic Segmentation |
| VLTSeg (EVA02-CLIP-L) | 65.6 | Strong but simple: A Baseline for Domain Generalized Dense Perception by CLIP-based Transfer Learning |
| DIFF | 58.01 | Diffusion Features to Bridge Domain Gap for Semantic Segmentation |
| CMFormer | 55.31 | Learning Content-enhanced Mask Transformer for Domain Generalized Urban-Scene Segmentation |
| Self-adaptation (ResNet - 101) | 46.99 | Semantic Self-adaptation: Enhancing Generalization with a Single Sample |
| GtA-SFDA Source-Only (DeepLabv2-ResNet101) | 43.5 | Generalize then Adapt: Source-Free Domain Adaptive Semantic Segmentation |
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