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metadata
license: cc-by-nc-nd-4.0
task_categories:
  - video-classification
  - object-detection
tags:
  - computer vision
  - Security
  - video
  - cyber security
  - biometric security
  - anti-spoofing
  - liveness detection
  - silicone mask
size_categories:
  - 1K<n<10K

#Silicone Mask Attack dataset

The dataset contains 6,500+ videos of attacks from 50 different people, filmed using 5 devices, providing a valuable resource for researching presentation attacks in facial recognition technologies. By focusing on this area, the dataset facilitates experiments designed to improve biometric security and anti-spoofing measures, ultimately aiding in the creation of more robust and reliable authentication systems.

By utilizing this dataset, researchers can develop more accurate liveness detection algorithms, which is crucial for achieving the iBeta Level 2 certification, a benchmark for robust and reliable biometric systems that prevent fraud. - Get the data

Attacks in the dataset

The attacks were recorded in diverse settings, showcasing individuals with various attributes. Each video includes human faces adorned with realistic silicone masks to mimic potential spoofing attempts in facial recognition systems.

Variants of backgrounds and attributes in the dataset:

💵 Buy the Dataset: This is a limited preview of the data. To access the full dataset, please contact us at https://unidata.pro to discuss your requirements and pricing options.

Metadata for the dataset

Researchers can learn more about the performance of recognition systems by examining this dataset, which reveals insights into the vulnerabilities of security systems. This data can help improve liveness detection systems, which are independently certified by iBeta, an independent laboratory that assesses the reliability of these systems.

🌐 UniData provides high-quality datasets, content moderation, data collection and annotation for your AI/ML projects