High-resolution Deep Convolutional Generative Adversarial Networks.
Link to Curtó & Zarza. Preview.
Alternate Link 1 to Curtó & Zarza.
Alternate Link 2 to Curtó & Zarza.
For more information visit the website:
If you use Curtó & Zarza in a publication, please cite the paper below:
@article{Curto17_2,
author = "J. D. Curt\'o and I. C. Zarza and F. Torre and I. King and M. R. Lyu",
title = "High-resolution Deep Convolutional Generative Adversarial Networks",
journal = "arXiv:1711.06491",
year = "2017",
}
Version 1.0, released on 24/01/2019.
- Samples (graphics/samples/)**.
- 14,248 cropped faces. Balanced in terms of ethnicity. Mirror images included to enhance pose variation.
- Labels (labels/c&z.csv and labels/c&z.p).
- CSV file with attribute information: Filename, Age, Ethnicity, Eyes Color, Facial Hair, Gender, Glasses, Hair Color, Hair Covered, Hair Style, Smile and Visible Forehead. We also include format Pickle to load in Python.
- Code (script_tensorflow/classification.py and generate_subfolders.py).
- Script to do classification using Tensorflow.
- Script to generate adequate subfolder of specific attribute. Useful to load into frameworks of Machine Learning.
- HDCGAN Synthetic Images (graphics/hdcgan/).
- 4,239 faces generated by HDCGAN trained on CelebA. Resized at 128x128.
- Additional Images (graphics/extra/samples/, labels/extra_c&z.csv and labels/extra_c&z.p)**.
- 3,384 cropped faces with labels. Ethnicity: White.
** Please note that we do not own the copyrights to these images. Their use is RESTRICTED to non-commercial research and educational purposes.


