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 43264350 of 6689 papers

TitleStatusHype
Learning to Find Missing Video Frames with Synthetic Data Augmentation: A General Framework and Application in Generating Thermal Images Using RGB Cameras0
Learning to Generate Images of Outdoor Scenes from Attributes and Semantic Layouts0
Learning to Generate Images with Perceptual Similarity Metrics0
Tracing the Roots: Leveraging Temporal Dynamics in Diffusion Trajectories for Origin Attribution0
Tracking in Aerial Hyperspectral Videos using Deep Kernelized Correlation Filters0
Learning To Memorize Feature Hallucination for One-Shot Image Generation0
Tracking multiple moving objects in images using Markov Chain Monte Carlo0
Tractable loss function and color image generation of multinary restricted Boltzmann machine0
Absorb and Converge: Provable Convergence Guarantee for Absorbing Discrete Diffusion Models0
Learning to Segment Brain Anatomy from 2D Ultrasound with Less Data0
Traditional Classification Neural Networks are Good Generators: They are Competitive with DDPMs and GANs0
Learning Universal Policies via Text-Guided Video Generation0
Learning Unnormalized Statistical Models via Compositional Optimization0
Learning Versatile 3D Shape Generation with Improved AR Models0
Learning Versatile 3D Shape Generation with Improved Auto-regressive Models0
Learning What and Where to Draw0
LEDiff: Latent Exposure Diffusion for HDR Generation0
LEDITS: Real Image Editing with DDPM Inversion and Semantic Guidance0
Lesion Conditional Image Generation for Improved Segmentation of Intracranial Hemorrhage from CT Images0
Less is More: Unsupervised Mask-guided Annotated CT Image Synthesis with Minimum Manual Segmentations0
Weakly Supervised Annotations for Multi-modal Greeting Cards Dataset0
A Self-attention Guided Multi-scale Gradient GAN for Diversified X-ray Image Synthesis0
Let's Go Shopping (LGS) -- Web-Scale Image-Text Dataset for Visual Concept Understanding0
Let's Verify and Reinforce Image Generation Step by Step0
Let's ViCE! Mimicking Human Cognitive Behavior in Image Generation Evaluation0
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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