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RealAlign Preference Dataset
This is the curated preference dataset for the paper "When Preference Labels Fall Short: Aligning Diffusion Models from Real Data" (ICML 2026).
| Resource | Link |
|---|---|
| π Paper | arXiv:2605.19839 |
| π Project page | cwyxx.github.io/RealAlign |
| π Code | github.com/Cwyxx/RealAlign |
Dataset summary
RealAlign studies whether real data can replace manually annotated preference labels for aligning text-to-image diffusion models. Instead of comparing two model-generated images and labelling which is preferred, we treat a high-quality reference image as the preferred ("win") sample β a real photograph (HPDv3) or a curated high-quality generated image (Civitai-top) β and contrast it with a perturbed / inpainted version as the non-preferred ("lose") sample. This yields preference pairs without any human preference annotation, and we show such reference-based supervision aligns diffusion models comparably to existing preference-based methods.
This dataset provides the resulting (real, fake) preference pairs used to train the RealAlign
SD-1.5 and SD-3.5-M models.
Sources
This release contains two sources, kept as separate subsets:
| Subset | Reference (win) images | Prompt / image origin |
|---|---|---|
HPDv3/ |
real photographs | Human Preference Dataset v3 |
Civitai-top/ |
high-quality generated images | Civitai top SFW images |
Note: The Pick-a-Pic v2 subset used in the paper is not included in this release because the source data may contain not-safe-for-work (NSFW) content.
Curation pipeline
The pairs are produced by RealAlign's four-stage data-curation pipeline
(see data_curation/ in the code repo):
- Extract β collect
(uid, prompt)entries for each source. - Construct pairs β for each reference image, generate the non-preferred ("fake") counterpart by computing a UΒ²-Net saliency mask and inpainting the salient region with a text-to-image model (SD / SD-3.5 / PixArt). The real image becomes the "win" sample and the inpainted image the "lose" sample for the same prompt.
- Score β score candidates with colorfulness, PickScore, and a Qwen3-VL anime classifier.
- Filter β curate per source. HPDv3 uses
anime drop β color filter β discard negative β top-512; Civitai-top applies top selection only.
Directory layout
HPDv3/
βββ HPDv3.csv # uid, prompt, win_image_path, lose_image_path
βββ real/<uid>.png # reference (preferred / "win") images
βββ fake/<uid>.png # perturbed (non-preferred / "lose") images
Civitai-top/
βββ Civitai-top.csv
βββ real/<uid>.png
βββ fake/<uid>.png
Each subset ships 512 final curated preference pairs as the images under real/ and fake/,
paired by uid. The accompanying CSV may list additional candidate rows from earlier curation
stages (HPDv3 in particular), so treat the images present in real//fake/ as the delivered set
and intersect the CSV by uid with those files.
CSV columns
| Column | Description |
|---|---|
uid |
Pair identifier; matches the <uid>.png filenames in real/ and fake/. |
prompt |
Text prompt for the pair. |
win_image_path |
Path to the preferred (real) image. |
lose_image_path |
Path to the non-preferred (fake / inpainted) image. |
Note:
win_image_path/lose_image_pathin the CSVs are the absolute paths from the original training machine (e.g./data_center/.../real/<uid>.png). When using this dataset, resolve images byuidagainst the localreal/andfake/folders, or remap the path prefix to your download location.
Usage
The curated CSV is consumed directly by the RealAlign trainers (csv_file_path_train for SD-1.5,
config.{irl,dpo}.csv_file_path for SD-3.5-M). See the
GitHub repository for full training instructions.
Citation
If you find this dataset useful, please consider citing:
@article{chen2026preference,
title={When Preference Labels Fall Short: Aligning Diffusion Models from Real Data},
author={Chen, Weiyan and Deng, Weijian and Xiao, Yao and Tu, Weijie and Dong, ZiYi and Radwan, Ibrahim and Lin, Liang and Wei, Pengxu},
journal={arXiv preprint arXiv:2605.19839},
year={2026}
}
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