公开数据集
数据结构 ? 215.33M
Data Structure ?
* 以上分析是由系统提取分析形成的结果,具体实际数据为准。
README.md
When using social networks, have you ever encountered a 'fake identity'?
Anyone can create a fake profile image using image editing tools, or even using deep learning based generators.
If you are interested in making the world wide web a better place by
recognizing such fake faces, you should check this dataset.
What's Inside and Why
Our dataset contains expert-generated high-quality photoshopped face images.
The images are composite of different faces, separated by eyes, nose, mouth, or whole face.
You may wonder why we need these expensive images other than images automatically generated by computers.
Say we want to train a classifier for real and fake face images.
In case of generative models like Generative Adversarial Networks (GAN), it is very easy to generate fake face images.
Then, a classifier can be trained using those images, and they do great job discriminating real and generated face images.
We can easily assume that the classifier learns some kind of pattern between images generated by GANs.
However, those patterns can be futile in front of human experts, since
exquisite counterfeits by experts are created in completely different
process.
Thus we had to create our own dataset with expert level fake face photos.
Directory and File Information
Inside the parent directory, training_real
/training_fake
contains real/fake face photos, respectively.
In case of fake photos, we have three groups; easy, mid, and hard (these
groups are separated subjectively, so we do not recommend using them as
explicit categories).
Also, you can use the filenames of fake images to see which part of faces are replaced (refer to the image below).
帕依提提提温馨提示
该数据集正在整理中,为您准备了其他渠道,请您使用
- 分享你的想法
全部内容
数据使用声明:
- 1、该数据来自于互联网数据采集或服务商的提供,本平台为用户提供数据集的展示与浏览。
- 2、本平台仅作为数据集的基本信息展示、包括但不限于图像、文本、视频、音频等文件类型。
- 3、数据集基本信息来自数据原地址或数据提供方提供的信息,如数据集描述中有描述差异,请以数据原地址或服务商原地址为准。
- 1、本站中的所有数据集的版权都归属于原数据发布者或数据提供方所有。
- 1、如您需要转载本站数据,请保留原数据地址及相关版权声明。
- 1、如本站中的部分数据涉及侵权展示,请及时联系本站,我们会安排进行数据下线。