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--- |
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license: cc-by-nc-4.0 |
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task_categories: |
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- image-feature-extraction |
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- image-classification |
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- video-classification |
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language: |
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- en |
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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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- paper mask attack |
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- iBeta certification |
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- PAD attack |
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- security |
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- ibeta |
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- face recognition |
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- pad |
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- authentication |
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- fraud |
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--- |
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7,000+ people, 70,000+ images: current selfies + archive photos |
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## Contact us and share your feedback - recieve additional samples for free! 😊 |
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## Real Multi-Year Temporal Coverage |
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- Archive photos from 6 months to 10+ years before current images - not synthetic aging |
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- Natural aging progression: wrinkles, hairstyle changes, weight fluctuations |
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## Above-Average Photos Per Person |
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- 8-15 archive photos (past) - historical photos from 1-15 years ago |
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- 2-4 current selfies (present) - recent appearance with lighting and environment variations |
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**Total: 70,000+ images across 7,000+ identities** |
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## Diverse Real-World Conditions |
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- Multi-device captures: Android, iOS, Windows (phones, webcams) |
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- Multi-ethnic coverage: Balanced representation across demographics |
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- Age range: 18-70 years old |
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## Metadata Included |
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- Demographics: gender, ethnicity, age |
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- Device info: OS (Android/iOS/Windows), device type, model |
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- Temporal data: archive photo years |
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## Full version of dataset is availible for commercial usage - leave a request on our website [Axonlabs ](https://axonlabs.pro/?utm_source=hugging-face&utm_medium=cpc&utm_campaign=profile&utm_content=profile_link) to purchase the dataset 💰 |
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## Potential Use Cases |
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- Face Recognition & Verification - High sample density per person for robust training |
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- Temporal/Age-Invariant Recognition - Multi-year gaps for aging-robust models |
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- Demographic Bias Testing - Balanced ethnic and age distribution |
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- Cross-Device Training - Photos from multiple device types and resolutions |
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- Long-term Identity Verification - Systems requiring recognition across years |
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## Related Datasets with Additional Features |
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This dataset focuses on temporal face recognition with current and archive selfies. For additional use cases, check out our related datasets: |
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**[1. Selfie & Official ID Photo Dataset](https://huggingface.co/datasets/AxonData/Selfie_and_Official_ID_Photo_Dataset)** |
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- Current and historical selfies PLUS official ID document photos (2 per person) |
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- Ideal for: KYC verification, selfie-to-ID matching, identity verification |
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- 6,000+ people with selfies + ID photos + archive photos |
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- Use case: Training models to match casual selfies against official documents |
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**[2. Face Recognition Dataset: Selfies & Videos](https://huggingface.co/datasets/AxonData/selfie-and-video-dataset)** |
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- Same base dataset PLUS NIST liveness videos (2 per person: zoom-in + head turn) |
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- Ideal for: Liveness detection, anti-spoofing, video face recognition |
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- 1,000+ people with selfies + archive photos + liveness videos |
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- Use case: Training models to detect presentation attacks and verify live persons |
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keywords: face recognition, face detection, biometric authentication, liveness detection,
anti-spoofing, video face recognition, computer vision,
selfie dataset, video dataset |