SOTAVerified

Image Generation

Image Generation (synthesis) is the task of generating new images from an existing dataset.

  • Unconditional generation refers to generating samples unconditionally from the dataset, i.e. $p(y)$
  • Conditional image generation (subtask) refers to generating samples conditionally from the dataset, based on a label, i.e. $p(y|x)$.

In this section, you can find state-of-the-art leaderboards for unconditional generation. For conditional generation, and other types of image generations, refer to the subtasks.

( Image credit: StyleGAN )

Papers

Showing 22012225 of 6689 papers

TitleStatusHype
Artworks Reimagined: Exploring Human-AI Co-Creation through Body Prompting0
Fully Automated Image De-fencing using Conditional Generative Adversarial Networks0
Codebook-enabled Generative End-to-end Semantic Communication Powered by Transformer0
Codebook Transfer with Part-of-Speech for Vector-Quantized Image Modeling0
E2VIDiff: Perceptual Events-to-Video Reconstruction using Diffusion Priors0
Fully-Featured Attribute Transfer0
DynASyn: Multi-Subject Personalization Enabling Dynamic Action Synthesis0
CoCoNO: Attention Contrast-and-Complete for Initial Noise Optimization in Text-to-Image Synthesis0
ARTIST: Improving the Generation of Text-rich Images with Disentangled Diffusion Models and Large Language Models0
Dynamic Product Image Generation and Recommendation at Scale for Personalized E-commerce0
Dynamic Neural Style Transfer for Artistic Image Generation using VGG190
COCO-GAN: Conditional Coordinate Generative Adversarial Network0
Accelerating Mobile Edge Generation (MEG) by Constrained Learning0
FTGAN: A Fully-trained Generative Adversarial Networks for Text to Face Generation0
DynamicID: Zero-Shot Multi-ID Image Personalization with Flexible Facial Editability0
Dynamic Dual-Output Diffusion Models0
Cocktail: Mixing Multi-Modality Controls for Text-Conditional Image Generation0
DynamicControl: Adaptive Condition Selection for Improved Text-to-Image Generation0
CoC-GAN: Employing Context Cluster for Unveiling a New Pathway in Image Generation0
Adversarial Training For Sketch Retrieval0
Dynamically Grown Generative Adversarial Networks0
DynaDog+T: A Parametric Animal Model for Synthetic Canine Image Generation0
Cobra: Efficient Line Art COlorization with BRoAder References0
DVAE++: Discrete Variational Autoencoders with Overlapping Transformations0
CoBIT: A Contrastive Bi-directional Image-Text Generation Model0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Improved DDPMFID12.3Unverified
2ADMFID11.84Unverified
3BigGAN-deepFID8.1Unverified
4Polarity-BigGANFID6.82Unverified
5VQGAN+Transformer (k=mixed, p=1.0, a=0.005)FID6.59Unverified
6MaskGITFID6.18Unverified
7VQGAN+Transformer (k=600, p=1.0, a=0.05)FID5.2Unverified
8CDMFID4.88Unverified
9ADM-GFID4.59Unverified
10RINFID4.51Unverified
#ModelMetricClaimedVerifiedStatus
1PresGANFID52.2Unverified
2RESFLOWFID48.29Unverified
3Residual FlowFID46.37Unverified
4GLF+perceptual loss (ours)FID44.6Unverified
5ProdPoly no activation functionsFID40.45Unverified
6ProdPoly no activation functionsFID36.77Unverified
7ACGANFID35.47Unverified
8DenseFlow-74-10FID34.9Unverified
9NVAE w/ flowFID32.53Unverified
10QSNGANFID31.97Unverified
#ModelMetricClaimedVerifiedStatus
1GLIDE + CLSFID30.87Unverified
2GLIDE + CLIPFID30.46Unverified
3GLIDE + CLS-FREEFID29.22Unverified
4GLIDE + CLIP + CLS + CLS-FREEFID29.18Unverified
5PGMGANFID21.73Unverified
6CLR-GANFID20.27Unverified
7FMFID14.45Unverified
8CT (Direct Generation, NFE=1)FID13Unverified
9CT (Direct Generation, NFE=2)FID11.1Unverified
10GLIDE +CLSKID7.95Unverified