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Multimodal Garment Designer (ICCV 2023)

Human-Centric Latent Diffusion Models for Fashion Image Editing

Alberto Baldrati*, Davide Morelli*, Giuseppe Cartella, Marcella Cornia, Marco Bertini, Rita Cucchiara

* Equal contribution.

arXiv GitHub Stars

This is the official repository for the paper "Multimodal Garment Designer: Human-Centric Latent Diffusion Models for Fashion Image Editing".

🔥🔥 [21/03/2024] If you are interested in multimodal fashion image editing take a look at our most recent work Multimodal-Conditioned Latent Diffusion Models for Fashion Image Editing. We introduce Ti-MGD a novel approach that also integrates fabric texture conditioning Repo

Overview

<p align="center"> <img src="images/1.gif" style="max-width:500px"> </p>

Abstract: <br> Fashion illustration is used by designers to communicate their vision and to bring the design idea from conceptualization to realization, showing how clothes interact with the human body. In this context, computer vision can thus be used to improve the fashion design process. Differently from previous works that mainly focused on the virtual try-on of garments, we propose the task of multimodal-conditioned fashion image editing, guiding the generation of human-centric fashion images by following multimodal prompts, such as text, human body poses, and garment sketches. We tackle this problem by proposing a new architecture based on latent diffusion models, an approach that has not been used before in the fashion domain. Given the lack of existing datasets suitable for the task, we also extend two existing fashion datasets, namely Dress Code and VITON-HD, with multimodal annotations collected in a semi-automatic manner. Experimental results on these new datasets demonstrate the effectiveness of our proposal, both in terms of realism and coherence with the given multimodal inputs.

Citation

If you make use of our work, please cite our paper:

@inproceedings{baldrati2023multimodal,
  title={Multimodal Garment Designer: Human-Centric Latent Diffusion Models for Fashion Image Editing},
  author={Baldrati, Alberto and Morelli, Davide and Cartella, Giuseppe and Cornia, Marcella and Bertini, Marco and Cucchiara, Rita},
  booktitle={Proceedings of the IEEE/CVF International Conference on Computer Vision},
  year={2023}
}

Getting Started

We recommend using the Anaconda package manager to avoid dependency/reproducibility problems. For Linux systems, you can find a conda installation guide here.

Installation

  1. Clone the repository
git clone https://github.com/aimagelab/multimodal-garment-designer
  1. Install Python dependencies
conda env create -n mgd -f environment.yml
conda activate mgd

Alternatively, you can create a new conda environment and install the required packages manually:

conda create -n mgd -y python=3.9
conda activate mgd
pip install torch==1.12.1 torchmetrics==0.11.0 opencv-python==4.7.0.68 diffusers==0.12.0 transformers==4.25.1 accelerate==0.15.0 clean-fid==0.1.35 torchmetrics[image]==0.11.0

Inference

To run the inference please use the following:

python src/eval.py --dataset_path <path> --batch_size <int> --mixed_precision fp16 --output_dir <path> --save_name <string> --num_workers_test <int> --sketch_cond_rate 0.2 --dataset <dresscode|vitonhd> --start_cond_rate 0.0 --test_order <paired|unpaired>

Note that we provide a few sample images to test MGD simply by cloning this repo (i.e., assets/data). To execute the code set

It is possible to run the inference on the whole Dress Code Multimodal or Viton-HD Multimodal dataset simply changing the dataset_path and dataset according with the downloaded and prepared datasets (see sections below).

Pre-trained models

The model and checkpoints are available via torch.hub.

Load the MGD denoising UNet model using the following code:

import torch
unet = torch.hub.load(
    dataset=<dataset>, 
    repo_or_dir='aimagelab/multimodal-garment-designer', 
    source='github', 
    model='mgd', 
    pretrained=True
    )

Use the denoising network with our custom diffusers pipeline as follow:

from src.mgd_pipelines.mgd_pipe import MGDPipe
from diffusers import AutoencoderKL, DDIMScheduler
from transformers import CLIPTextModel, CLIPTokenizer

pretrained_model_name_or_path = "runwayml/stable-diffusion-inpainting"

text_encoder = CLIPTextModel.from_pretrained(
    pretrained_model_name_or_path, 
    subfolder="text_encoder"
    )

vae = AutoencoderKL.from_pretrained(
    pretrained_model_name_or_path, 
    subfolder="vae"
    )

tokenizer = CLIPTokenizer.from_pretrained(
    pretrained_model_name_or_path,
    subfolder="tokenizer",
    )

val_scheduler = DDIMScheduler.from_pretrained(
    pretrained_model_name_or_path,
    subfolder="scheduler"
    )
val_scheduler.set_timesteps(50)

mgd_pipe = MGDPipe(
    text_encoder=text_encoder,
    vae=vae,
    unet=unet,
    tokenizer=tokenizer,
    scheduler=val_scheduler,
    )

For an extensive usage case see the file eval.py in the main repo.

Datasets

We do not hold rights on the original Dress Code and Viton-HD datasets. Please refer to the original papers for more information.

Start by downloading the original datasets from the following links:

Download the Dress Code Multimodal and Viton-HD Multimodal additional data annotations from here.

Dress Code Multimodal Data Preparation

Once data is downloaded prepare the dataset folder as follows:

<pre> Dress Code | <b>fine_captions.json</b> | <b>coarse_captions.json</b> | test_pairs_paired.txt | test_pairs_unpaired.txt | train_pairs.txt | <b>test_stitch_map</b> |---- [category] |-------- images |-------- keypoints |-------- skeletons |-------- dense |-------- <b>im_sketch</b> |-------- <b>im_sketch_unpaired</b> ... </pre>

Viton-HD Multimodal Data Preparation

Once data is downloaded prepare the dataset folder as follows:

<pre> Viton-HD | <b>captions.json</b> |---- train |-------- image |-------- cloth |-------- image-parse-v3 |-------- openpose_json |-------- <b>im_sketch</b> |-------- <b>im_sketch_unpaired</b> ... |---- test ... |-------- <b>im_sketch</b> |-------- <b>im_sketch_unpaired</b> ... </pre>

TODO

Acknowledgements

This work has partially been supported by the PNRR project “Future Artificial Intelligence Research (FAIR)”, by the PRIN project “CREATIVE: CRoss-modal understanding and gEnerATIon of Visual and tExtual content” (CUP B87G22000460001), both co-funded by the Italian Ministry of University and Research, and by the European Commission under European Horizon 2020 Programme, grant number 101004545 - ReInHerit.

LICENSE

<a rel="license" href="http://creativecommons.org/licenses/by-nc/4.0/"><img alt="Creative Commons License" style="border-width:0" src="https://i.creativecommons.org/l/by-nc/4.0/88x31.png" /></a><br />All material is available under Creative Commons BY-NC 4.0. You can use, redistribute, and adapt the material for non-commercial purposes, as long as you give appropriate credit by citing our paper and indicate any changes you've made.