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2D Masks Presentation Attack Detection - Biometric Attack dataset

The anti spoofing dataset consists of videos of individuals wearing printed 2D masks or printed 2D masks with cut-out eyes and directly looking at the camera. Videos are filmed in different lightning conditions and in different places (indoors, outdoors). Each video in the liveness detection dataset has an approximate duration of 2 seconds.

๐Ÿ’ด For Commercial Usage: Full version of the dataset includes 7251 videos, leave a request on TrainingData to buy the dataset

Types of videos in the dataset:

  • real - 4 videos of the person without a mask.
  • mask - 4 videos of the person wearing a printed 2D mask.
  • cut - 4 videos of the person wearing a printed 2D mask with cut-out holes for eyes.

People in the dataset wear different accessorieses, such as glasses, caps, scarfs, hats and masks. Most of them are worn over a mask, however glasses and masks can be are also printed on the mask itself.

The dataset serves as a valuable resource for computer vision, anti-spoofing tasks, video analysis, and security systems. It allows for the development of algorithms and models that can effectively detect attacks perpetrated by individuals wearing printed 2D masks.

The dataset comprises videos of genuine facial presentations using various methods, including 2D masks and printed photos, as well as real and spoof faces. It proposes a novel approach that learns and extracts facial features to prevent spoofing attacks, based on deep neural networks and advanced biometric techniques.

Our results show that this technology works effectively in securing most applications and prevents unauthorized access by distinguishing between genuine and spoofed inputs. Additionally, it addresses the challenging task of identifying unseen spoofing cues, making it one of the most effective techniques in the field of anti-spoofing research.

๐Ÿ’ด Buy the Dataset: This is just an example of the data. Leave a request on https://trainingdata.pro/datasets to discuss your requirements, learn about the price and buy the dataset

Content

The folder "files" includes 17 folders:

  • corresponding to each person in the sample
  • containing of 12 videos of the individual

File with the extension .csv

  • user: person in the videos,
  • real_1,... real_4: links to the videos with people without mask,
  • mask_1,... mask_4: links to the videos with 2D mask,
  • cut_1,... cut_4: links to the videos with 2D mask with cut-out eyes

Attacks might be collected in accordance with your requirements.

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