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 36013650 of 6689 papers

TitleStatusHype
Backdoor in Seconds: Unlocking Vulnerabilities in Large Pre-trained Models via Model Editing0
Texture synthesis via projection onto multiscale, multilayer statistics0
Generative Flows with Invertible Attentions0
Generative Guiding Block: Synthesizing Realistic Looking Variants Capable of Even Large Change Demands0
A Comprehensive Multi-Illuminant Dataset for Benchmarking of the Intrinsic Image Algorithms0
Generative Image Modeling Using Spatial LSTMs0
Generative Image Modeling using Style and Structure Adversarial Networks0
Generative Model for Zero-Shot Sketch-Based Image Retrieval0
Backdoor Attack and Defense in Federated Generative Adversarial Network-based Medical Image Synthesis0
Generative Modeling of Individual Behavior at Scale0
TFCustom: Customized Image Generation with Time-Aware Frequency Feature Guidance0
VLForgery Face Triad: Detection, Localization and Attribution via Multimodal Large Language Models0
Generative Modelling with High-Order Langevin Dynamics0
TF-TI2I: Training-Free Text-and-Image-to-Image Generation via Multi-Modal Implicit-Context Learning in Text-to-Image Models0
Generative models for visualising abstract social processes: Guiding streetview image synthesis of StyleGAN2 with indices of deprivation0
Generative Multimodal Pretraining with Discrete Diffusion Timestep Tokens0
Generative networks as inverse problems with fractional wavelet scattering networks0
A comparative study of generative adversarial networks for image recognition algorithms based on deep learning and traditional methods0
A Closer Look at Few-shot Image Generation0
Generative OpenMax for Multi-Class Open Set Classification0
Backbone Augmented Training for Adaptations0
Generative Portrait Shadow Removal0
Generative Probabilistic Image Colorization0
Generative Rendering: Controllable 4D-Guided Video Generation with 2D Diffusion Models0
Generative Self-training for Cross-domain Unsupervised Tagged-to-Cine MRI Synthesis0
Generative Sensing: Transforming Unreliable Sensor Data for Reliable Recognition0
Generative Steganographic Flow0
Generative Steganography Diffusion0
Generative Steganography Network0
Generative Watermarking Against Unauthorized Subject-Driven Image Synthesis0
Generative Zero-Shot Composed Image Retrieval0
Generative Zero-shot Network Quantization0
Generative Zoo0
Generator Born from Classifier0
Generator Matching: Generative modeling with arbitrary Markov processes0
Rethinking Multidimensional Discriminator Output for Generative Adversarial Networks0
Generic Camera Attribute Control using Bayesian Optimization0
Generic Perceptual Loss for Modeling Structured Output Dependencies0
The Brain Tumor Segmentation (BraTS) Challenge 2023: Brain MR Image Synthesis for Tumor Segmentation (BraSyn)0
The Brittleness of AI-Generated Image Watermarking Techniques: Examining Their Robustness Against Visual Paraphrasing Attacks0
GenFlow: Interactive Modular System for Image Generation0
GENHOP: An Image Generation Method Based on Successive Subspace Learning0
The Challenges of Image Generation Models in Generating Multi-Component Images0
AC-LoRA: Auto Component LoRA for Personalized Artistic Style Image Generation0
GenLit: Reformulating Single-Image Relighting as Video Generation0
A Wavelet Diffusion GAN for Image Super-Resolution0
GenSpace: Benchmarking Spatially-Aware Image Generation0
A Watermark for Auto-Regressive Image Generation Models0
GeoBiked: A Dataset with Geometric Features and Automated Labeling Techniques to Enable Deep Generative Models in Engineering Design0
Active Image Synthesis for Efficient Labeling0
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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