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- ---
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- license: cc-by-4.0
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- ---
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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+ ---
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+ license: cc-by-4.0
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+ tags:
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+ - "liveness detection"
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+ - "anti-spoofing"
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+ - "biometrics"
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+ - "facial recognition"
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+ - "machine learning"
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+ - "deep learning"
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+ - "AI"
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+ - "3D mask attack"
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+ - "PAD attack"
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+ - "active liveness"
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+ - "security"
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+ ---
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+ # Liveness Detection Dataset: 3D Paper Mask Attacks
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+
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+ ## The full version of the dataset is available for commercial use. Request access via our website at Axonlabs to purchase the dataset 💰
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+ ## For feedback and additional sample requests, please contact us!
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+
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+ ## Dataset Description
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+
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+ The **3D Paper Mask Attack Dataset** focuses on **3D volume-based paper attacks**, incorporating elements such as the nose, shoulders, and forehead. These attacks are designed to be advanced and are useful for both **PAD level 1** and **level 2** liveness tests. This dataset includes videos captured using various mobile devices and incorporates active liveness detection techniques.
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+
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+ ### Key Features
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+ - **40+ Participants**: Engaged in the dataset creation, with a balanced representation of Caucasian, Black, and Asian ethnicities.
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+ - **Video Capture**: Videos are captured on both **iOS and Android phones**, with **multiple frames** and **approximately 7 seconds** of video per attack.
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+ - **Active Liveness**: Includes a **zoom-in and zoom-out phase** to simulate active liveness detection.
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+ - **Diverse Scenarios**:
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+ - Options to add **volume-based elements** such as scarves, glasses, and hoodies.
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+ - Captured using both **low-end and high-end devices**.
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+ - Includes specific **attack scenarios** and **movements**, especially useful for **active liveness testing**.
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+ - **Specific paper types** are used for attacks, contributing to the diversity of the dataset.
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+
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+ ### Ongoing Data Collection
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+ - This dataset is still in the data collection phase, and we welcome feedback and requests to incorporate additional features or specific requirements.
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+
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+ ### Potential Use Cases
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+ This dataset is ideal for training and evaluating models for:
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+ - **Liveness Detection**: Distinguishing between selfies and advanced spoofing attacks using 3D paper masks.
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+ - **iBeta Liveness Testing**: Preparing models for **iBeta** liveness testing, ensuring high accuracy in differentiating real faces from spoof attacks.
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+ - **Anti-Spoofing**: Enhancing security in biometric systems by identifying spoof attacks involving paper masks and other advanced methods.
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+ - **Biometric Authentication**: Improving facial recognition systems' resilience to sophisticated paper-based spoofing attacks.
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+ - **Machine Learning and Deep Learning**: Assisting researchers in developing robust liveness detection models for various testing scenarios.
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+
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+ ### Keywords
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+ - iBeta Certifications
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+ - PAD Attacks
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+ - Presentation Attack Detection
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+ - Antispoofing
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+ - Liveness Detection
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+ - Spoof Detection
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+ - Facial Recognition
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+ - Biometric Authentication
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+ - Security Systems
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+ - AI Dataset
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+ - 3D Mask Attack Dataset
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+ - Active Liveness
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+ - Anti-Spoofing Technology
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+ - Facial Biometrics
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+ - Machine Learning Dataset
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+ - Deep Learning
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+
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+ ## Contact and Feedback
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+ We welcome your feedback! Feel free to reach out to us and share your experience with this dataset. If you're interested, you can also **receive additional samples for free**! 😊
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+ Visit us at **Axonlabs** to request a full version of the dataset for commercial usage.