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---
configs:
- config_name: default
  data_files:
  - split: test
    path: data/test-*
dataset_info:
  features:
  - name: image
    dtype: image
  - name: label
    dtype:
      class_label:
        names:
          '0': real
          '1': fake
  - name: generator
    dtype:
      class_label:
        names:
          '0': Real
          '1': ADM
          '2': BigGAN
          '3': CycleGAN
          '4': DALLE2
          '5': GauGAN
          '6': GLIDE
          '7': Midjourney
          '8': ProGAN
          '9': SD14
          '10': SD15
          '11': SDXL
          '12': StarGAN
          '13': StyleGAN
          '14': StyleGAN2
          '15': VQDM
          '16': WhichFaceIsReal
          '17': Wukong
  splits:
  - name: test
    num_bytes: 29870625563
    num_examples: 125026
  download_size: 32032878953
  dataset_size: 29870625563
license: apache-2.0
task_categories:
- image-classification
language:
- en
---

# AIGC Detection Benchmark Dataset

## 📝 Dataset Description

**Dataset Summary**

The AIGC Detection Benchmark Dataset is a high-quality collection of images and associated metadata designed to benchmark models for detecting and identifying the source of artificially generated content. The dataset contains a mix of real-world images and images generated by a wide array of prominent AI models, including diffusion models (like Stable Diffusion, DALL-E 2, Midjourney, ADM) and GANs (like BigGAN, StyleGAN, ProGAN).

Each image is meticulously labeled under two categories, enabling researchers to tackle two distinct, high-value computer vision tasks: binary real/fake classification and multi-class source model identification. **Note: This specific version of the dataset is designed exclusively for testing and evaluation purposes, with all data consolidated into a single test split.**

**Supported Tasks and Leaderboards**

This dataset directly supports two critical image classification tasks:

|**Task ID**|**Task Name**|**Description**| **Output Classes**                                                                                                                                         |
| ----------- | ------------------------------ | ------------------------------------------------------------------------------------- | ---------------------------------------------------------------------------------------------------------------------------------------------------------- |
|**Task A**|Binary Veracity Classification|Classifying images as either real or fake.| 2 (real, fake)                                                                                                                                             |
|**Task B**|AI Model Source Identification|Identifying the specific AI generation model used for images labeled as AI-Generated.| 18 (Real, ADM, BigGAN, CycleGAN, DALLE2, GauGAN, GLIDE, Midjourney, ProGAN, SD14, SD15, SDXL, StarGAN, StyleGAN, StyleGAN2, VQDM, WhichFaceIsReal, Wukong) |

**Languages**

The descriptive text, including all captions, is in English (en).

## 🗂️ Data Splits

All instances have been merged into a single test split to serve strictly as an evaluation benchmark.

|**Split**|**Number of Instances**|**Notes**|
|---|---|---|
|**test**|125,026|Used exclusively for final, unbiased model evaluation and benchmarking.|

## 💾 Dataset Structure

**Data Instances**

A single data instance consists of an image file and two distinct labels detailing its source and authenticity.

|**Field Name**|**Example Value**|**Description**|
|---|---|---|
|**image**|`<PIL.Image.Image object>`|The actual image content loaded into a PIL object.|
|**label**|`1`|Binary label for authenticity (Real vs. AI-Generated).|
|**generator**|`3`|Multi-class label for the specific generation model (or Real).|

**Data Fields**

The dataset contains the following fields:

|**Field Name**|**Data Type**|**Description**|
|---|---|---|
|**image**|`datasets.Image()`|The actual image content (e.g., .jpg, .png).|
|**label**|`datasets.ClassLabel`|Task A: Binary label for image veracity.|
|**generator**|`datasets.ClassLabel`|Task B: Label specifying the generation source/model.|

## 🏷️ Label Definitions

The two label fields use the following mappings:

**`label` (Binary Veracity Classification)**

|**Label**|**Value**|**Description**|
|---|---|---|
|**real**|`0`|Image is a real photograph/non-AI generated.|
|**fake**|`1`|Image was created by an AI generation model.|

**`generator` (Model Source Identification)**

| **Label**           | **Value** | **Description**                                           |
| ------------------- | --------- | --------------------------------------------------------- |
| **Real**            | `0`       | Real image (no AI generation involved).                   |
| **ADM**             | `1`       | Generated by Ablated Diffusion Model (Guided Diffusion).  |
| **BigGAN**          | `2`       | Generated by BigGAN.                                      |
| **CycleGAN**        | `3`       | Generated by CycleGAN.                                    |
| **DALLE2**          | `4`       | Generated by OpenAI's DALL-E 2.                           |
| **GauGAN**          | `5`       | Generated by GauGAN (SPADE).                              |
| **GLIDE**           | `6`       | Generated by GLIDE.                                       |
| **Midjourney**      | `7`       | Generated by Midjourney.                                  |
| **ProGAN**          | `8`       | Generated by ProGAN (Progressive GAN).                    |
| **SD14**            | `9`       | Generated by Stable Diffusion 1.4.                        |
| **SD15**            | `10`      | Generated by Stable Diffusion 1.5.                        |
| **SDXL**            | `11`      | Generated by Stable Diffusion XL.                         |
| **StarGAN**         | `12`      | Generated by StarGAN.                                     |
| **StyleGAN**        | `13`      | Generated by StyleGAN.                                    |
| **StyleGAN2**       | `14`      | Generated by StyleGAN2.                                   |
| **VQDM**            | `15`      | Generated by Vector Quantized Diffusion Model.            |
| **WhichFaceIsReal** | `16`      | Real human face sourced from the WhichFaceIsReal dataset. |
| **Wukong**          | `17`      | Generated by the Wukong diffusion model.                  |

## 🔗 Sources

- **Original dataset**: [Ekko-zn/AIGCDetectBenchmark](https://github.com/Ekko-zn/AIGCDetectBenchmark).