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Image To Image Translation On Cityscapes

Metrics

FID
Per-pixel Accuracy
mIoU

Results

Performance results of various models on this benchmark

Model Name
FID
Per-pixel Accuracy
mIoU
Paper TitleRepository
SIMS49.775.5%47.2Semi-parametric Image Synthesis-
USIS-Wavelet50.14-42.32Wavelet-based Unsupervised Label-to-Image Translation-
SPADE71.881.9%62.3Semantic Image Synthesis with Spatially-Adaptive Normalization-
INADE---Diverse Semantic Image Synthesis via Probability Distribution Modeling-
USIS53.67-44.78USIS: Unsupervised Semantic Image Synthesis-
pix2pix-71.0-Image-to-Image Translation with Conditional Adversarial Networks-
CC-FPSE-AUG52.1-63.1Improving Augmentation and Evaluation Schemes for Semantic Image Synthesis-
SPADE + SESAME54.282.5%66SESAME: Semantic Editing of Scenes by Adding, Manipulating or Erasing Objects-
DP-SIMS (ConvNext-L)38.2-76.3Unlocking Pre-trained Image Backbones for Semantic Image Synthesis-
pix2pixHD9581.4%58.3High-Resolution Image Synthesis and Semantic Manipulation with Conditional GANs-
OASIS47.7-69.3You Only Need Adversarial Supervision for Semantic Image Synthesis-
BiGAN-19%-Adversarially Learned Inference-
CoGAN-40%-Coupled Generative Adversarial Networks-
CRN104.777.1%52.4Photographic Image Synthesis with Cascaded Refinement Networks-
SB-GAN60.39--Semantic Bottleneck Scene Generation-
DP-GAN44.1-73.6Dual Pyramid Generative Adversarial Networks for Semantic Image Synthesis-
SimGAN-20%-Learning from Simulated and Unsupervised Images through Adversarial Training-
CC-FPSE54.382.3%65.5Learning to Predict Layout-to-image Conditional Convolutions for Semantic Image Synthesis-
Pix2PixHD-AUG72.7-58Improving Augmentation and Evaluation Schemes for Semantic Image Synthesis-
SPADE + FFL59.582.5%64.2Focal Frequency Loss for Image Reconstruction and Synthesis-
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Image To Image Translation On Cityscapes | SOTA | HyperAI