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ImageDream Reconstruction

Peng Wang, Yichun Shi

Project Page | Paper | Demo

imagedream-teaser.mp4

Installation

This part is the same as original MVDream-threestudio. Skip it if you already have installed the environment.

Quickstart

Clone the modelcard on the Huggingface ImageDream Model Page under ./extern/ImageDream/release_models/

In the paper, we use the configuration with soft-shading. It would need an A100 GPU in most cases to compute normal:

export PYTHONPATH=$PYTHONPATH:./extern/ImageDream
image_file="./extern/ImageDream/assets/astronaut.png"
ckpt_file="./extern/ImageDream/release_models/ImageDream/sd-v2.1-base-4view-ipmv.pt"
cfg_file="./extern/ImageDream/imagedream/configs/sd_v2_base_ipmv.yaml"

python3 launch.py \
    --config configs/$method.yaml --train --gpu 0 \
    name="imagedream-sd21-shading" tag="astronaut" \
    system.prompt_processor.prompt="an astronaut riding a horse" \
    system.prompt_processor.image_path="${image_file}" \
    system.guidance.ckpt_path="${ckpt_file}" \
    system.guidance.config_path="${cfg_file}"

For diffusion only model, refer to subdir ./extern/ImageDream/ Check ./threestudio/scripts/run_imagedream.sh for a bash example.

Credits

Tips

  1. Place the object in the center and do not make it too large/small in the image.
  2. If you have an object cutting image edge, in config, tuning the parameters range of elevation and fov to be a larger range, e.g. [0, 30], otherwise, you may do image outpainting and follow tips 1.
  3. Check the results with ImageDream diffusion model before using it in 3D rendering to save time.

PreComputed Results

  • Since there is some randomness in diffusion model and time costly to get baseline results. We put our pre-computed results for reproducing Tab.1 in the paper in a hugging face dataset card

Citing

If you find ImageDream helpful, please consider citing:

@article{wang2023imagedream,
  title={ImageDream: Image-Prompt Multi-view Diffusion for 3D Generation},
  author={Wang, Peng and Shi, Yichun},
  journal={arXiv preprint arXiv:2312.02201},
  year={2023}
}