Description The ArtiFact dataset is a large-scale image dataset that aims to include a diverse collection of real and synthetic images from multiple categories, including Human/Human Faces, Animal/Animal Faces, Places, Vehicles, Art, and many other real-life objects. The dataset comprises 8 sources that were carefully chosen to ensure diversity and includes images synthesized from 25 distinct methods, including 13 GANs, 7 Diffusion, and 5 other miscellaneous generators. The dataset contains 2,496,738 images, comprising 964,989 real images and 1,531,749 fake images. To ensure diversity across different sources, the real images of the dataset are randomly sampled from source datasets containing numerous categories, whereas synthetic images are generated within the same categories as the real images. Captions and image masks from the COCO dataset are utilized to generate images for text2image and inpainting generators, while normally distributed noise with different random seeds is used for noise2image generators. The dataset is further processed to reflect real-world scenarios by applying random cropping, downscaling, and JPEG compression, in accordance with the IEEE VIP Cup 2022 standards. The ArtiFact dataset is intended to serve as a benchmark for evaluating the performance of synthetic image detectors under real-world conditions. It includes a broad spectrum of diversity in terms of generators used and syntheticity, providing a challenging dataset for image detection tasks. Statistics: Total number of images: 2,496,738 Number of real images: 964,989 Number of fake images: 1,531,749 Number of generators used for fake images: 25 (including 13 GANs, 7 Diffusion, and 5 miscellaneous generators) Number of sources used for real images: 8 Categories included in the dataset: Human/Human Faces, Animal/Animal Faces, Places, Vehicles, Art, and other real-life objects Image Resolution: 200 x 200 🔢 Dataset Overview Total Files: 2.5 million Total Columns (Features): 132 Number of Models Represented: 13 GANs 7 Diffusion Models 5 Miscellaneous Generators 📁 Data Sources / Generators GAN-based (13): BigGAN StyleGAN1 StyleGAN2 StyleGAN3 CycleGAN GauGAN ProGAN GANSformer ProjectedGAN StarGAN CIPS Generative Inpainting Face Synthetics Diffusion-based (7): DDPM Diffusion GAN Denoising Diffusion GAN GLIDE Latent Diffusion Palette Stable Diffusion Miscellaneous / Other (5): Taming Transformer VQ Diffusion LAMA MAT Imagenet 📂 Datasets Used AFHQ CelebA-HQ FFHQ LSUN COCO Landscape MetFaces SFHQ