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홈
SOTA
세마틱 세그멘테이션
Semantic Segmentation On Cityscapes
Semantic Segmentation On Cityscapes
평가 지표
Mean IoU (class)
평가 결과
이 벤치마크에서 각 모델의 성능 결과
Columns
모델 이름
Mean IoU (class)
Paper Title
VLTSeg
86.4
Strong but simple: A Baseline for Domain Generalized Dense Perception by CLIP-based Transfer Learning
MetaPrompt-SD
86.2
Harnessing Diffusion Models for Visual Perception with Meta Prompts
InternImage-H
86.1%
InternImage: Exploring Large-Scale Vision Foundation Models with Deformable Convolutions
HS3-Fuse
85.8%
HS3: Learning with Proper Task Complexity in Hierarchically Supervised Semantic Segmentation
InverseForm
85.6%
InverseForm: A Loss Function for Structured Boundary-Aware Segmentation
ViT-Adapter-L (Mask2Former, BEiT pretrain)
85.2%
Vision Transformer Adapter for Dense Predictions
SERNet-Former
84.83
SERNet-Former: Semantic Segmentation by Efficient Residual Network with Attention-Boosting Gates and Attention-Fusion Networks
Depth Anything
84.8%
Depth Anything: Unleashing the Power of Large-Scale Unlabeled Data
HRNetV2 + OCR +
84.5%
Segmentation Transformer: Object-Contextual Representations for Semantic Segmentation
EfficientPS
84.21%
EfficientPS: Efficient Panoptic Segmentation
Panoptic-DeepLab
84.2%
Panoptic-DeepLab: A Simple, Strong, and Fast Baseline for Bottom-Up Panoptic Segmentation
HRNetV2 + OCR (w/ ASP)
83.7%
Segmentation Transformer: Object-Contextual Representations for Semantic Segmentation
DCNAS(coarse + Mapillary)
83.6%
DCNAS: Densely Connected Neural Architecture Search for Semantic Image Segmentation
Euclidean Frank-Wolfe CRFs (backbone: DeepLabv3+)(coarse)
83.6%
Regularized Frank-Wolfe for Dense CRFs: Generalizing Mean Field and Beyond
ResNeSt200 (Mapillary)
83.3%
ResNeSt: Split-Attention Networks
GALDNet(+Mapillary)++
83.3%
Global Aggregation then Local Distribution in Fully Convolutional Networks
HANet (Height-driven Attention Networks by LGE A&B)(coarse)
83.2%
Cars Can't Fly up in the Sky: Improving Urban-Scene Segmentation via Height-driven Attention Networks
kMaX-DeepLab (ConvNeXt-L, fine only)
83.2%
kMaX-DeepLab: k-means Mask Transformer
SegFormer (MiT-B5, Mapillary)
83.1%
SegFormer: Simple and Efficient Design for Semantic Segmentation with Transformers
MRFM(coarse)
83.0%
Multi Receptive Field Network for Semantic Segmentation
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