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# DDPM inversion, CVPR 2024 |
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[Project page](https://inbarhub.github.io/DDPM_inversion/) | [Arxiv](https://arxiv.org/abs/2304.06140) | [Supplementary materials](https://inbarhub.github.io/DDPM_inversion/resources/inversion_supp.pdf) | [Hugging Face Demo](https://huggingface.co/spaces/LinoyTsaban/edit_friendly_ddpm_inversion) |
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### Official pytorch implementation of the paper: <br>"An Edit Friendly DDPM Noise Space: Inversion and Manipulations" |
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#### Inbar Huberman-Spiegelglas, Vladimir Kulikov and Tomer Michaeli |
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<br> |
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Our inversion can be used for text-based **editing of real images**, either by itself or in combination with other editing methods. |
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Due to the stochastic nature of our method, we can generate **diverse outputs**, a feature that is not naturally available with methods relying on the DDIM inversion. |
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In this repository we support editing using our inversion, prompt-to-prompt (p2p)+our inversion, ddim or [p2p](https://github.com/google/prompt-to-prompt) (with ddim inversion).<br> |
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**our inversion**: our ddpm inversion followed by generating an image conditioned on the target prompt. |
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**prompt-to-prompt (p2p) + our inversion**: p2p method using our ddpm inversion. |
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**ddim**: ddim inversion followed by generating an image conditioned on the target prompt. |
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**p2p**: p2p method using ddim inversion (original paper). |
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## Table of Contents |
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* [Requirements](#Requirements) |
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* [Repository Structure](#Repository-Structure) |
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* [Algorithm Inputs and Parameters](#Algorithm-Inputs-and-Parameters) |
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* [Usage Example](#Usage-Example) |
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* [Citation](#Citation) |
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## Requirements |
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``` |
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python -m pip install -r requirements.txt |
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``` |
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This code was tested with python 3.8 and torch 2.0.0. |
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## Repository Structure |
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``` |
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βββ ddm_inversion - folder contains inversions in order to work on real images: ddim inversion as well as ddpm inversion (our method). |
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βββ example_images - folder of input images to be edited |
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βββ imgs - images used in this repository readme.md file |
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βββ prompt_to_prompt - p2p code |
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βββ main_run.py - main python file for real image editing |
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βββ test.yaml - yaml file contains images and prompts to test on |
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``` |
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A folder named 'results' will be automatically created and all the results will be saved to this folder. We also add a timestamp to the saved images in this folder. |
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## Algorithm Inputs and Parameters |
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Method's inputs: |
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``` |
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init_img - the path to the input images |
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source_prompt - a prompt describing the input image |
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target_prompts - the edit prompt (creates several images if multiple prompts are given) |
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``` |
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These three inputs are supplied through a YAML file (please use the provided 'test.yaml' file as a reference). |
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<br> |
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Method's parameters are: |
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``` |
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skip - controlling the adherence to the input image |
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cfg_tar - classifier free guidance strengths |
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``` |
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These two parameters have default values, as descibed in the paper. |
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## Usage Example |
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``` |
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python3 main_run.py --mode="our_inv" --dataset_yaml="test.yaml" --skip=36 --cfg_tar=15 |
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python3 main_run.py --mode="p2pinv" --dataset_yaml="test.yaml" --skip=12 --cfg_tar=9 |
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``` |
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The ```mode``` argument can also be: ```ddim``` or ```p2p```. |
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In ```our_inv``` and ```p2pinv``` modes we suggest to play around with ```skip``` in the range [0,40] and ```cfg_tar``` in the range [7,18]. |
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**p2pinv and p2p**: |
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Note that you can play with the cross-and self-attention via ```--xa``` and ```--sa``` arguments. We suggest to set them to (0.6,0.2) and (0.8,0.4) for p2pinv and p2p respectively. |
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**ddim and p2p**: |
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```skip``` is overwritten to be 0. |
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<!-- ## Create Your Own Editing with Our Method |
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(1) Add your image to /example_images. <br> |
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(2) Run ``main_run.py --mode="our_inv"``, choose ``skip`` and ``cfg_tar``. <br> |
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Example: |
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``` |
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python3 main_run.py --skip=20 --cfg_tar=10 --img_name=gnochi_mirror --cfg_src='a cat is sitting next to a mirror' --cfg_tar='a drawing of a cat sitting next to a mirror' |
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``` --> |
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You can edit the test.yaml file to load your image and choose the desired prompts. |
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<!-- ## Sources |
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The DDPM code was adapted from the following [pytorch implementation of DDPM](https://github.com/lucidrains/denoising-diffusion-pytorch). |
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The modified CLIP model as well as most of the code in `./text2live_util/` directory was taken from the [official Text2live repository](https://github.com/omerbt/Text2LIVE). --> |
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## Citation |
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If you use this code for your research, please cite our paper: |
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``` |
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@inproceedings{huberman2024edit, |
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title={An edit friendly {DDPM} noise space: Inversion and manipulations}, |
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author={Huberman-Spiegelglas, Inbar and Kulikov, Vladimir and Michaeli, Tomer}, |
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booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition}, |
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pages={12469--12478}, |
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year={2024} |
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} |
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``` |