Poster
Learning Multi-Dimensional Human Preference for Text-to-Image Generation
Sixian Zhang · Bohan Wang · Junqiang Wu · Yan Li · Tingting Gao · Di ZHANG · Zhongyuan Wang
Arch 4A-E Poster #312
Current metrics for text-to-image models typically relies on statistical metrics which inadequately represent the real preference of humans. Although recent works attempt to learn these preferences via human annotated images, they reduce the rich tapestry of human preference to a single overall score. However, the preference results vary when humans evaluate images with different aspects. Therefore, to learn the multi-dimensional human preferences, we propose Multi-dimensional Preference Score (MPS), the first multi-dimensional preference scoring model for the evaluation of text-to-image models. The MPS introduces the preference condition module upon CLIP model to learn these diverse preferences. It is trained based on our Multi-dimensional Human Preference (MHP) Dataset, which comprises 918,315 human preference choices across 4 dimensions (i.e., aesthetics, semantic alignment, detail quality and overall assessment) on 607,541 images. The images are generated by a wide range of latest text-to-image models. The MPS outperforms existing scoring methods across 3 datasets in 4 dimensions, enabling it a promising metric for evaluating and improving text-to-image generation. The model and dataset will be made publicly available to facilitate future research.