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FERET-Morphs

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https://zenodo.org/records/4415202
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*** DISCLAIMER Distribution of FRGC-Morph has been suspended. ***   Database Description FERET-Morphs is a dataset of morphed faces selected from the publicly available FERET dataset (https://www.nist.gov/itl/products-and-services/color-feret-database). We created the database by selecting similar looking pairs of people, and made 3 types of morphs for each pair using the following morphing tools: OpenCV (https://www.learnopencv.com/face-morph-using-opencv-cpp-python/) FaceMorpher (https://github.com/yaopang/FaceMorpher/tree/master/facemorpher) StyleGAN 2 (https://github.com/NVlabs/stylegan2)   Instructions This dataset is planned for vulnerability analysis experiments in the context of face recognition. Therefore, it is intended to be used in conjunction with the original FERET dataset. The `copy_original_feret.py` file included with this dataset helps with preparing the file structure so this folder may easily be used for such experiments.     $ python copy_original_feret.py /path/to/original/feret/folder Once completed the directory's structure should be as given below: +-- feret |   +-- morph_facemorpher |   +-- morph_opencv |   +-- morph_stylegan |   +-- raw |   +-- protocols |   +-- copy_original_feret.py |   +-- feret_selection.csv |   +-- README.txt   Protocols The vulnerability analysis can be conducted in two ways, using: morphed images as references (`reverse-protocol`) morphed images as probes (`scores-protocol`) The protocols for both types of experiments are provided in the `protocols` folder, each of which contains the file lists of detailing the exact images used as references (`for_models.lst`) and as probes (`for_probes.lst`) for each morphing tool. The data is *not* split into subsets, rather a single set is provided both as the development (`dev`) and evaluation set (`eval`) in order to be easily used by a toolkit such as bob (https://www.idiap.ch/software/bob).   References Any publication (eg. conference paper, journal article, technical report, book chapter, etc) resulting from the usage of FERET_Morphs must cite the following papers: @INPROCEEDINGS{9746477,     author = {Sarkar, Eklavya and Korshunov, Pavel and Colbois, Laurent and Marcel, Sébastien},     booktitle = {ICASSP 2022 - 2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)},     title = {Are GAN-based morphs threatening face recognition?},     year={2022},     pages={2959-2963},     url={https://doi.org/10.1109/ICASSP43922.2022.9746477}     doi={10.1109/ICASSP43922.2022.9746477} } @article{Sarkar2020,     title={Vulnerability Analysis of Face Morphing Attacks from Landmarks and Generative Adversarial Networks},     author={Eklavya Sarkar and Pavel Korshunov and Laurent Colbois and S\'{e}bastien Marcel},     year={2020},     month=oct,     journal={arXiv preprint},     url={https://arxiv.org/abs/2012.05344} }   Any publication (eg. conference paper, journal article, technical report, book chapter, etc) resulting from the usage of FERET and subsequently FERET_Morphs must also cite the following paper: P. Jonathon Phillips, Harry Wechsler, Jeffery Huang, and Patrick J. Rauss, The feret database and evaluation procedure for face-recognition algorithms. Image and Vision Computing, Vol. 16, no.5, pp. 295–306, 1998.
创建时间:
2022-12-22
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