Commercial

Multi-Material Fingerprint Spoofing Dataset

Multi-Material Fingerprint Spoofing Dataset contains 4,000+ fingerprint images from 100 individuals, captured with a ZKTeco ZK9500 optical scanner and including real fingerprints and spoofing attacks created with alginate, plasticine, and silicone materials. The fingerprint dataset includes metadata (gender, age, finger, hand, device) and supports biometric security research, presentation attack detection, spoof detection, and fingerprint recognition model training.

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  • People
    100
  • Photos
    4000+
Multi-Material Fingerprint Spoofing Dataset
  • Computer Vision
  • Machine Learning
  • Image Processing
  • Security
  • Anti-Spoofing

Multi-Material Fingerprint Spoofing Dataset contains 4,000+ fingerprint images from 100 individuals, captured with a ZKTeco ZK9500 optical scanner and including real fingerprints and spoofing attacks created with alginate, plasticine, and silicone materials. The fingerprint dataset includes metadata (gender, age, finger, hand, device) and supports biometric security research, presentation attack detection, spoof detection, and fingerprint recognition model training.

Get in touch Download sample
  • Computer Vision
  • Machine Learning
  • Image Processing
  • Security
  • Anti-Spoofing
  • People
    100
  • Photos
    4000+

Dataset Info

Characteristic Data
Description Fingerprint images were captured via four attack types: alginate, real, plasticine, and silicone
Data types Image
Tasks Spoof Detection, Classification
Number of images 4000+
Number of files in a set 40 (10 real, 10 alginate, 10 plasticine, 10 silicone)
Type of attack Alginate, real, plasticine, and silicone.
Labeling Metadata (gender, age, finger, hand, device)
Total number of people 100
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Technical
Characteristics

Characteristic Data
Image Extension JPG
Device ZKTeco ZK9500
Source and collection methodology: Data was collected using a ZKTeco ZK9500 optical scanner.

Dataset Use Cases

  • Biometric Security

    Fingerprint Spoof Detection for Authentication Systems

    Biometric security platforms rely on accurate spoof detection to prevent unauthorized access. This fingerprint dataset contains real and fake fingerprint images produced with alginate, plasticine, and silicone materials. The variety of attack types allows developers to train detection algorithms that identify presentation attacks in fingerprint scanners and biometric authentication systems.

  • Cybersecurity & Identity Protection

    Presentation Attack Detection in Biometric Systems

    Security researchers can use this fingerprint dataset to study presentation attack detection in modern biometric systems. The database contains labeled fingerprint images and spoofing materials that simulate real attack scenarios. Such training data helps improve biometric antispoofing algorithms used in identity verification, access control technologies, and secure authentication platforms.

  • Computer Vision & Deep Learning

    Training Deep Learning Models for Fingerprint Analysis

    Computer vision teams apply this dataset when training deep learning models for fingerprint recognition and spoof detection. The collection includes multiple fingerprint types captured by optical scanners, providing consistent image data for model training. Researchers can evaluate recognition systems and improve algorithms that detect spoof fingerprints during authentication processes.

  • Forensics & Biometric Research

    Fingerprint Identification and Pattern Analysis

    Forensic laboratories and biometric research groups analyze fingerprint images to study differences between genuine and spoof fingerprints. The dataset supports fingerprint analysis, fingerprint comparison, and pattern recognition tasks. Researchers use it to test detection methods, evaluate biometric identification systems, and improve reliability in real-world security and forensic investigations.

FAQs

What is included in Multi-Material Fingerprint Spoofing Dataset?
The dataset contains more than 4,000 fingerprint images collected from 100 individuals. Each dataset set includes 40 images per subject, covering real fingerprints and three spoofing materials: alginate, plasticine, and silicone.
What types of annotations are provided in the dataset?
Each fingerprint image includes structured metadata annotations such as gender, age, finger type, hand orientation, and capture device.
What biometric attack types are represented in the dataset?
The dataset includes four categories of fingerprint captures: real fingerprints, alginate spoofs, plasticine spoofs, and silicone spoofs. These different attack types allow researchers to test spoofing detection algorithms across multiple biometric attack scenarios.
How was the data collected?
Fingerprint images were captured using a ZKTeco ZK9500 optical fingerprint scanner in controlled conditions.
How are Unidata datasets licensed?
Unidata datasets follow a dual-licensing model. Free samples are available for testing and evaluation, while full datasets are provided exclusively through purchase.
Do Unidata datasets comply with GDPR and other data privacy regulations?
Yes. All datasets are curated in accordance with GDPR and applicable data protection laws. Data is collected from legally permissible sources to ensure ethical and lawful usage.
How are Unidata datasets stored?
All datasets are securely stored on AWS cloud infrastructure, ensuring high availability and scalability. Storage practices follow ISO 27001 and ISO 27701 standards, providing internationally recognized information security and privacy management.
How long does it take to receive the dataset?
After submitting a request, the Unidata team reviews the dataset requirements and prepares the necessary documentation. Once the agreement is signed and payment is completed, the dataset is delivered within 3–10 days.
Still have questions about using Unidata datasets? Read our user-guides

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