Disentangled Lifespan Face Synthesis

Related tags

Deep Learning DLFS
Overview

Disentangled Lifespan Face Synthesis

Project Page | Paper

Demo on Colab

Explore in Colab

Preparation

Please follow this github to prepare the environments and dataset.

Training and Testing (link to the pretrained models in the colab)

training (please modify --dataroot, --name):

sh train_distan.sh

testing (please modify --dataroot, --name, --which_epoch, and --checkpoing_dir):

sh test_distan.sh

Reference

If you find this repo helpful, please consider citing:

@inproceedings{he2021dlfs,
  title={Disentangled Lifespan Face Synthesis},
  author={He, Sen and Liao, Wentong and Yang, Michael and Song, Yi-Zhe and Rosenhahn, Bodo and Xiang, Tao},
  booktitle={ICCV},
  year={2021}
}

Acknowledgements

This repository is based on LFS.

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Comments
  • How to get the metric of paper?

    How to get the metric of paper?

    Hi,

    Thanks for you nice work. When I used your code to test on the test dataset, I only got the some images, but I could not get the age error, reconfiguration and so on.

    Should I use other progarm? or other methods, Could you give me some suggestions?

    Best wishes to you!

    opened by zwy1996 2
  • Even a 11kb image uploaded to Colab causes Cuda out of memory

    Even a 11kb image uploaded to Colab causes Cuda out of memory

    Hi I am trying out your model cool on colab, but even a 11kb 256*256 image uploaded will cause cuda out of memory? same happens to my 16G RAM GPU. I wonder whether that is to be expected - can you provide example images that can run on colab?

    opened by chenxwh 2
  • Can I use RTX3090 to train this model?

    Can I use RTX3090 to train this model?

    I want to run this model in RTX3090,but the process will dead when it meet netG.cuda(gpu_ids[0]), but I can run this code normally in 2080. I can't figure out what the problem is. Hope for your response.

    opened by yummyJade 0
Owner
何森
Research fellow at CVSSP, University of Surrey, UK.
何森
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