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--- |
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configs: |
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- config_name: magic_bench_dataset |
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data_files: magic_bench_dataset.csv |
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default: true |
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- config_name: magic_bench_chinese |
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data_files: magic_bench_chinese.csv |
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- config_name: magic_bench_english |
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data_files: magic_bench_english.csv |
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language: |
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- zh |
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- en |
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task_categories: |
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- text-to-image |
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tags: |
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- art |
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size_categories: |
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- n<1K |
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license: cc-by-nc-4.0 |
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--- |
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# Magic Bench: A Comprehensive Text-to-Image Generation Evaluation Dataset |
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## 📖 Overview |
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Magic Bench is a comprehensive evaluation dataset designed for text-to-image generation models. It contains 377 carefully curated prompts with detailed annotations across multiple dimensions, providing both Chinese and English versions for cross-lingual evaluation. |
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## 🎯 Dataset Features |
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- **Systematic and Comprehensive Categorization**: We develop a taxonomy that systematically captures the core capabilities and application scenarios of T2I models. |
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- **Multiple Test Points per Prompt**: To better reflect the user perspective, Magic-Bench-377 embeds multiple capabilities within a single prompt. |
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- **Clarity and Visualizability**: Prompts should be concise, explicit and easy to visualize, while avoiding vague or non-visualizable descriptions |
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- **Neutrality and Fairness.**: Descriptions involving regional specificity, references to celebrities, or copyrighted characters must be avoided to ensure fair evaluation across all models. |
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## 📊 Dataset Structure |
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| Field | Description | |
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|-------|-------------| |
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| `Prompt_text_cn`| Chinese version of the prompt | |
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| `Prompt_text_en`| English version of the prompt | |
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| `Application Scenario`| To account for the diversity of real world, magic bench 377 is divided into five categories | |
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| `Expression Form`| Refers to semantic units not directly pointing to visual elements but testing model’s understanding and reasoning over special forms of expressio | |
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| `Element Composition`| Refers to visual elements or information arising from the combination of multiple element | |
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| `Element`| Refers to visual elements or information that can be expressed by a single semantic unit, typically a word | |
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## 🏷️ Taxonomy introduction |
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### 1. Application Scenario |
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- **Aesthetic design**: Focuses on model use as a visual tool in professional design contexts, such as poster design, logo design, product design, etc. Models are expected to provide visually appealing outputs with high aesthetic quality. |
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- **Art** : Focuses on user needs for high-level artistic creation, requiring models to generate outputs aligned with artistic styles, aesthetics, and visual imagination, such as oil painting, watercolor, sketching, or abstract expression. |
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- **Entertainment** : Focuses on user needs for casual, creative and entertaining content, often reflecting internet culture (e.g., memes, emojis, or playful illustrations). The goal is to stimulate fun, amusement, or humor. |
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- **Film** : Focuses on user needs for story-driven content creation, such as storyboards, cinematic scenes, or animated sequences. Models are expected to understand narrative details and generate scenes with coherent environments and character interactions. |
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- **Functional design** : Focuses on user needs for practical work and learning materials, such as teaching slides, product manuals, or office diagrams. Outputs emphasize clarity, conciseness and informativeness. |
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### 2. Expression Form |
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- **Pronoun Reference**: Pronouns (he, she, it, they) referring back to entities mentioned earlier in the text, requiring the model to resolve co-reference. |
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- **Negation**: Negative expressions such as "no", "without" or "does not". |
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- **Consistency**: Multiple entities of the same type sharing the same attribute. |
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### 3. Element Composition |
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- **Anti-Realism**: Combinations that contradict real-world cognition or physical laws. |
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- **Multi-Entity Feature Matching**: Multiple entities of the same type with distinct attribute values. |
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- **Layout & Typography**: Descriptions of spatial or positional relationships among images, text, or symbols. |
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### 4. Element |
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- **Entity**: Semantic units referring to entities such as people, animals, scenes, costumes, and decorations, including real-world and virtual entities, man-made objects, and natural elements. |
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- **Entity Description**: Semantic units describing the quantity, attributes, forms, states, or relationships of entities. |
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- **Image Description**: Semantic units that describe visual elements of a scene, including style, aesthetics, and artistic knowledge. |
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## 📁 Files |
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- `magic_bench_dataset.csv`: Complete dataset |
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- `magic_bench_chinese.csv`: Chinese prompts with labels |
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- `magic_bench_english.csv`: English prompts with labels |
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## 🚀 Usage |
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```python |
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import pandas as pd |
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# Load the complete dataset |
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df = pd.read_csv('magic_bench_dataset.csv') |
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# Load Chinese version |
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df_cn = pd.read_csv('magic_bench_chinese.csv') |
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# Load English version |
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df_en = pd.read_csv('magic_bench_english.csv') |
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``` |
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## 📈 Statistics |
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- **Total prompts**: 377 |
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- **Aesthetic design prompts**: 95 (25.2%) |
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- **Art prompts**: 80 (21.2%) |
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- **Prompts with style specifications**: 241 (63.9%) |
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- **Prompts requiring aesthetic knowledge**: 131 (34.7%) |
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- **Prompts with atmospheric elements**: 22 (5.8%) |
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## 🎯 Use Cases |
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1. **Model Evaluation**: Comprehensive evaluation of text-to-image models |
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2. **Research**: Study model capabilities in different scenarios |
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3. **Fine-tuning**: Use as training or validation data for model improvement |
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## 📄 Citation |
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If you use this dataset in your research, please cite: |
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```bibtex |
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@dataset{magic_bench_377, |
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title={Magic Bench: A Comprehensive Text-to-Image Generation Evaluation Dataset}, |
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author={outongtong}, |
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year={2025}, |
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email={outongtong.ott@bytedance.com}, |
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url={https://huggingface.co/datasets/ByteDance-Seed/MagicBench} |
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} |
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``` |
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## 📜 License |
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This dataset is released under the [cc-by-nc-4.0](LICENSE). |
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## 🤝 Contributing |
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We welcome contributions to improve the dataset. Please feel free to: |
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- Report issues or suggest improvements |
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- Submit pull requests with enhancements |
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- Share your evaluation results using this dataset |
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## 📞 Contact |
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For questions or collaborations, please contact: outongtong.ott@bytedance.com |
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--- |
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**Keywords**: text-to-image, evaluation, benchmark, dataset, computer vision, AI, machine learning |