FFHQ 70000张png图片 链接:https://pan.baidu.com/s/1XDfTKWOhtwAAQQJ0KBU4RQ 提取码:bowj ## Flickr-Faces-HQ Dataset (FFHQ) ![Python 3.6](https://img.shields.io/badge/python-3.6-green.svg?style=plastic) ![License CC](https://img.shields.io/badge/license-CC-green.svg?style=plastic) ![Format PNG](https://img.shields.io/badge/format-PNG-green.svg?style=plastic) ![Resolution 1024×1024](https://img.shields.io/badge/resolution-1024×1024-green.svg?style=plastic) ![Images 70000](https://img.shields.io/badge/images-70,000-green.svg?style=plastic) ![Teaser image](./ffhq-teaser.png) Flickr-Faces-HQ (FFHQ) is a high-quality image dataset of human faces, originally created as a benchmark for generative adversarial networks (GAN): > **A Style-Based Generator Architecture for Generative Adversarial Networks**
> Tero Karras (NVIDIA), Samuli Laine (NVIDIA), Timo Aila (NVIDIA)
> http://stylegan.xyz/paper The dataset consists of 70,000 high-quality PNG images at 1024×1024 resolution and contains considerable variation in terms of age, ethnicity and image background. It also has good coverage of accessories such as eyeglasses, sunglasses, hats, etc. The images were crawled from [Flickr](https://www.flickr.com/), thus inheriting all the biases of that website, and automatically aligned and cropped using [dlib](http://dlib.net/). Only images under permissive licenses were collected. Various automatic filters were used to prune the set, and finally [Amazon Mechanical Turk](https://www.mturk.com/) was used to remove the occasional statues, paintings, or photos of photos. For business inquiries, please contact [researchinquiries@nvidia.com](mailto:researchinquiries@nvidia.com) For press and other inquiries, please contact Hector Marinez at [hmarinez@nvidia.com](mailto:hmarinez@nvidia.com) ## Licenses The individual images were published in Flickr by their respective authors under either [Creative Commons BY 2.0](https://creativecommons.org/licenses/by/2.0/), [Creative Commons BY-NC 2.0](https://creativecommons.org/licenses/by-nc/2.0/), [Public Domain Mark 1.0](https://creativecommons.org/publicdomain/mark/1.0/), [Public Domain CC0 1.0](https://creativecommons.org/publicdomain/zero/1.0/), or [U.S. Government Works](http://www.usa.gov/copyright.shtml) license. All of these licenses allow **free use, redistribution, and adaptation for non-commercial purposes**. However, some of them require giving **appropriate credit** to the original author, as well as **indicating any changes** that were made to the images. The license and original author of each image are indicated in the metadata. * [https://creativecommons.org/licenses/by/2.0/](https://creativecommons.org/licenses/by/2.0/) * [https://creativecommons.org/licenses/by-nc/2.0/](https://creativecommons.org/licenses/by-nc/2.0/) * [https://creativecommons.org/publicdomain/mark/1.0/](https://creativecommons.org/publicdomain/mark/1.0/) * [https://creativecommons.org/publicdomain/zero/1.0/](https://creativecommons.org/publicdomain/zero/1.0/) * [http://www.usa.gov/copyright.shtml](http://www.usa.gov/copyright.shtml) The dataset itself (including JSON metadata, download script, and documentation) is made available under [Creative Commons BY-NC-SA 4.0](https://creativecommons.org/licenses/by-nc-sa/4.0/) license by NVIDIA Corporation. You can **use, redistribute, and adapt it for non-commercial purposes**, as long as you (a) give appropriate credit by **citing our paper**, (b) **indicate any changes** that you've made, and (c) distribute any derivative works **under the same license**. * [https://creativecommons.org/licenses/by-nc-sa/4.0/](https://creativecommons.org/licenses/by-nc-sa/4.0/) ## Overview All data is hosted on Google Drive: | Path | Size | Files | Format | Description | :--- | :--: | ----: | :----: | :---------- | [ffhq-dataset](https://drive.google.com/open?id=1u2xu7bSrWxrbUxk-dT-UvEJq8IjdmNTP) | 2.56 TB | 210,014 | | Main folder | ├  [ffhq-dataset-v1.json](https://drive.google.com/open?id=1IB0BFbN_eRZx9UkJqLHSgJiQhqX-PrI6) | 254 MB | 1 | JSON | Metadata including copyright info, URLs, etc. | ├  [images1024x1024](https://drive.google.com/open?id=1u3Hbfn3Q6jsTlte3BY85CGwId77H-OOu) | 89.1 GB | 70,000 | PNG | Aligned and cropped images at 1024×1024 | ├  [thumbnails128x128](https://drive.google.com/open?id=1uJkWCpLUM-BnXW3H_IgVMdfENeNDFNmC) | 1.95 GB | 70,000 | PNG | Thumbnails at 128×128 | ├  [in-the-wild-images](https://drive.google.com/open?id=1YyuocbwILsHAjTusSUG-_zL343jlVBhf) | 955 GB | 70,000 | PNG | Original images from Flickr | ├  [tfrecords](https://drive.google.com/open?id=1LTBpJ0W_WLjqza3zdayligS8Dh1V1gA6) | 273 GB | 9 | tfrecords | Multi-resolution data for [StyleGAN](http://stylegan.xyz/code) and [ProGAN](https://github.com/tkarras/progressive_growing_of_gans) | └  [zips](https://drive.google.com/open?id=1WocxvZ4GEZ1DI8dOz30aSj2zT6pkATYS) | 1.28 TB | 4 | ZIP | Contents of each folder as a ZIP archive. High-level statistics: ![Pie charts](./ffhq-piecharts.png) For use cases that require separate training and validation sets, we have appointed the first 60,000 images to be used for training and the remaining 10,000 for validation. In the [StyleGAN paper](http://stylegan.xyz/paper), however, we used all 70,000 images for training. We have explicitly made sure that there are no duplicate images in the dataset itself. However, please note that the `in-the-wild` folder may contain multiple copies of the same image in cases where we extracted several different faces from the same image. ## Download script You can either grab the data directly from Google Drive or use the provided [download script](./download_ffhq.py). The script makes things considerably easier by automatically downloading all the requested files, verifying their checksums, retrying each file several times on error, and employing multiple concurrent connections to maximize bandwidth. ``` > python download_ffhq.py -h usage: download_ffhq.py [-h] [-j] [-s] [-i] [-t] [-w] [-r] [-a] [--num_threads NUM] [--status_delay SEC] [--timing_window LEN] [--chunk_size KB] [--num_attempts NUM] Download Flickr-Face-HQ (FFHQ) dataset to current working directory. optional arguments: -h, --help show this help message and exit -j, --json download metadata as JSON (254 MB) -s, --stats print statistics about the dataset -i, --images download 1024x1024 images as PNG (89.1 GB) -t, --thumbs download 128x128 thumbnails as PNG (1.95 GB) -w, --wilds download in-the-wild images as PNG (955 GB) -r, --tfrecords download multi-resolution TFRecords (273 GB) -a, --align recreate 1024x1024 images from in-the-wild images --num_threads NUM number of concurrent download threads (default: 32) --status_delay SEC time between download status prints (default: 0.2) --timing_window LEN samples for estimating download eta (default: 50) --chunk_size KB chunk size for each download thread (default: 128) --num_attempts NUM number of download attempts per file (default: 10) ``` ``` > python ..\download_ffhq.py --json --images Downloading JSON metadata... \ 100.00% done 1/1 files 0.25/0.25 GB 43.21 MB/s ETA: done Parsing JSON metadata... Downloading 70000 files... | 100.00% done 70000/70000 files 89.19 GB/89.19 GB 59.87 MB/s ETA: done ``` The script also serves as a reference implementation of the automated scheme that we used to align and crop the images. Once you have downloaded the in-the-wild images with `python download_ffhq.py --wilds`, you can run `python download_ffhq.py --align` to reproduce exact replicas of the aligned 1024×1024 images using the facial landmark locations included in the metadata. ## Metadata The `ffhq-dataset-v1.json` file contains the following information for each image in a machine-readable format: ``` { "0": { # Image index "category": "training", # Training or validation "metadata": { # Info about the original Flickr photo: "photo_url": "https://www.flickr.com/photos/...", # - Flickr URL "photo_title": "DSCF0899.JPG", # - File name "author": "Jeremy Frumkin", # - Author "country": "", # - Country where the photo was taken "license": "Attribution-NonCommercial License", # - License name "license_url": "https://creativecommons.org/...", # - License detail URL "date_uploaded": "2007-08-16", # - Date when the photo was uploaded to Flickr "date_crawled": "2018-10-10" # - Date when the photo was crawled from Flickr }, "image": { # Info about the aligned 1024x1024 image: "file_url": "https://drive.google.com/...", # - Google Drive URL "file_path": "images1024x1024/00000.png", # - Google Drive path "file_size": 1488194, # - Size of the PNG file in bytes "file_md5": "ddeaeea6ce59569643715759d537fd1b", # - MD5 checksum of the PNG file "pixel_size": [1024, 1024], # - Image dimensions "pixel_md5": "47238b44dfb87644460cbdcc4607e289", # - MD5 checksum of the raw pixel data "face_landmarks": [...] # - 68 face landmarks reported by dlib }, "thumbnail": { # Info about the 128x128 thumbnail: "file_url": "https://drive.google.com/...", # - Google Drive URL "file_path": "thumbnails128x128/00000.png", # - Google Drive path "file_size": 29050, # - Size of the PNG file in bytes "file_md5": "bd3e40b2ba20f76b55dc282907b89cd1", # - MD5 checksum of the PNG file "pixel_size": [128, 128], # - Image dimensions "pixel_md5": "38d7e93eb9a796d0e65f8c64de8ba161" # - MD5 checksum of the raw pixel data }, "in_the_wild": { # Info about the in-the-wild image: "file_url": "https://drive.google.com/...", # - Google Drive URL "file_path": "in-the-wild-images/00000.png", # - Google Drive path "file_size": 3991569, # - Size of the PNG file in bytes "file_md5": "1dc0287e73e485efb0516a80ce9d42b4", # - MD5 checksum of the PNG file "pixel_size": [2016, 1512], # - Image dimensions "pixel_md5": "86b3470c42e33235d76b979161fb2327", # - MD5 checksum of the raw pixel data "face_rect": [667, 410, 1438, 1181], # - Axis-aligned rectangle of the face region "face_landmarks": [...], # - 68 face landmarks reported by dlib "face_quad": [...] # - Aligned quad of the face region } }, ... } ``` ## Acknowledgements We thank Jaakko Lehtinen, David Luebke, and Tuomas Kynkäänniemi for in-depth discussions and helpful comments; Janne Hellsten, Tero Kuosmanen, and Pekka Jänis for compute infrastructure and help with the code release. We also thank Vahid Kazemi and Josephine Sullivan for their work on automatic face detection and alignment that enabled us to collect the data in the first place: > **One Millisecond Face Alignment with an Ensemble of Regression Trees**
> Vahid Kazemi, Josephine Sullivan
> Proc. CVPR 2014
> https://www.cv-foundation.org/openaccess/content_cvpr_2014/papers/Kazemi_One_Millisecond_Face_2014_CVPR_paper.pdf