Marigold Intrinsic Image Decomposition (IID) Appearance v1-1 Model Card

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This is a model card for the marigold-iid-appearance-v1-1 model for single-image Intrinsic Image Decomposition (IID). The model is fine-tuned from the stable-diffusion-2 model as described in a follow-up of our CVPR'2024 paper titled "Repurposing Diffusion-Based Image Generators for Monocular Depth Estimation".

This model type (appearance) is trained to perform InteriorVerse decomposition into Albedo and two BRDF material properties: roughness and metallicity. Both the input image and the output albedo are in the sRGB color space. For an alternative model type (lighting) that performs decomposition into Albedo, Diffuse shading, and Non-diffuse residual, click here.

  • Play with the interactive Hugging Face Spaces demo: check out how the model works with example images or upload your own.
  • Use it with diffusers to compute the results with a few lines of code.
  • Get to the bottom of things with our official codebase.

Model Details

  • Developed by: Bingxin Ke, Kevin Qu, Tianfu Wang, Nando Metzger, Shengyu Huang, Bo Li, Anton Obukhov, Konrad Schindler.
  • Model type: Generative latent diffusion-based intrinsic image decomposition (appearance: albedo, roughness, and metallicity) from a single image.
  • Language: English.
  • License: CreativeML Open RAIL++-M License.
  • Model Description: This model can be used to generate an estimated intrinsic image decomposition of an input image.
    • Resolution: Even though any resolution can be processed, the model inherits the base diffusion model's effective resolution of roughly 768 pixels. This means that for optimal predictions, any larger input image should be resized to make the longer side 768 pixels before feeding it into the model.
    • Steps and scheduler: This model was designed for usage with DDIM scheduler and between 1 and 50 denoising steps.
    • Outputs:
      • Albedo: The predicted values are between 0 and 1, sRGB space.
      • Roughness and metallicity: The predicted values are between 0 and 1, linear space.
      • Uncertainty maps: Produced for each modality only when multiple predictions are ensembled with ensemble size larger than 2.
  • Resources for more information: Project Website, Paper, Code.
  • Cite as:

Placeholder for the citation block of the follow-up paper

@InProceedings{ke2023repurposing,
      title={Repurposing Diffusion-Based Image Generators for Monocular Depth Estimation},
      author={Bingxin Ke and Anton Obukhov and Shengyu Huang and Nando Metzger and Rodrigo Caye Daudt and Konrad Schindler},
      booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
      year={2024}
}
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