yczhou001/LongBench-T2I
Draw ALL Your Imagine: A Holistic Benchmark and Agent Framework for Complex Instruction-based Image Generation
This project helps researchers and developers working with text-to-image (T2I) models evaluate how well these models follow complex instructions. It takes detailed text descriptions and assesses the quality and accuracy of the generated images, helping to understand which T2I approaches are best for complex visual synthesis. It's designed for AI researchers and practitioners focused on generative AI and computer vision.
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Use this if you need to rigorously benchmark and improve text-to-image models' ability to follow lengthy, intricate prompts and generate visually coherent, accurate images.
Not ideal if you are looking for a simple tool to generate images from basic text prompts without needing deep evaluation metrics.
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Language
Python
License
MIT
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Last pushed
Sep 24, 2025
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