Implementation for Shape from Polarization for Complex Scenes in the Wild

Overview

sfp-wild

Implementation for Shape from Polarization for Complex Scenes in the Wild

project website | paper

Code and dataset will be released soon.

Introduction

We present a new data-driven approach with physics-based priors to scene-level normal estimation from a single polarization image. Existing shape from polarization (SfP) works mainly focus on estimating the normal of a single object rather than complex scenes in the wild. A key barrier to high-quality scene-level SfP is the lack of real-world SfP data in complex scenes. Hence, we contribute the first real-world scene-level SfP dataset with paired input polarization images and ground-truth normal maps. Then we propose a learning-based framework with a multi-head self-attention module and viewing encoding, which is designed to handle increasing polarization ambiguities caused by complex materials and non-orthographic projection in scene-level SfP. Our trained model can be generalized to far-feld outdoor scenes as the relationship between polarized light and surface normals is not affected by distance. Experimental results demonstrate that our approach significantly outperforms existing SfP models on two datasets.

Citation

If you find this work useful for your research, please cite:

@article{lei2021shape,
    title={Shape from Polarization for Complex Scenes in the Wild}, 
    author={Chenyang Lei and Chenyang Qi and Jiaxin Xie and Na Fan and Vladlen Koltun and Qifeng Chen},
    year={2021},
    journal={arXiv: 2112.11377},
}

Contact

Please contact us if there is any question (Chenyang Lei, [email protected]; Chenyang Qi, [email protected])

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Comments
  • Request to upload pre-trained model

    Request to upload pre-trained model

    Currently the combined datasets for sfp wild and the two comparison methods are uploaded which enables evaluation of the paper results after training. Would you be willing to upload the results from training? That would greatly reduce the effort needed to apply the model to out of sample data.

    opened by greenbrettmichael 2
  • LICENSE

    LICENSE

    Good day,

    Thank you for your incredible work.

    Could you please add the license files for the project itself, the dataset and the trained model. After all, I need to know whether I can rely on the project, and with what restrictions.

    Thank you!

    opened by MaksymTymkovych 4
  • Probably wrong argument name in inference script

    Probably wrong argument name in inference script

    In ./configs/reproduce_full_model_infer.sh:

    https://github.com/ChenyangLEI/sfp-wild/blob/41c747b30b4b0505b328504c8d97330c6e562c4b/configs/reproduce_full_model_infer.sh#L1-L11

    At line 7, the argument name is probably mistyped as EXP_NAME which should have been EXPNAME as defined in line 1.

    opened by Ikemura-kei 2
Owner
Chenyang LEI
CS Ph.D. student at HKUST
Chenyang LEI
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