Using Human Feedback to Fine-tune Diffusion Models without Any Reward Model
Paper
•
2311.13231
•
Published
•
28
image
imagewidth (px) 512
512
| label
class label 4
classes |
|---|---|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
|
0images1
|
Description: This repository contains the dataset for the D3PO method in this paper Using Human Feedback to Fine-tune Diffusion Models without Any Reward Model. The d3po_dataset file pertains to the image distortion experiment of the anything-v5 model.
The text2img_dataset comprises the images generated from the pretrained, preferred image fine-tuned, reward weighted fine-tuned and D3PO fine-tuned models in the prompt-image alignment experiment.
Source Code: The code used to generate this data can be found here.
Directory
d3po_dataset
text2img_dataset:
Citation
@article{yang2023using,
title={Using Human Feedback to Fine-tune Diffusion Models without Any Reward Model},
author={Yang, Kai and Tao, Jian and Lyu, Jiafei and Ge, Chunjiang and Chen, Jiaxin and Li, Qimai and Shen, Weihan and Zhu, Xiaolong and Li, Xiu},
journal={arXiv preprint arXiv:2311.13231},
year={2023}
}