--- license: cc-by-nc-4.0 tags: - liveness detection - anti-spoofing - biometrics - facial recognition - machine learning - deep learning - AI - paper mask attack - iBeta certification - PAD attack - security - ibeta - face recognition - pad - authentication - fraud task_categories: - video-classification --- # Face Antispoofing dataset for liveness detection Anti-Spoofing dataset: live, replay, cut, print, 3D masks - large-scale face anti spoofing This dataset delivers a single, end-to-end resource for training and benchmarking facial liveness-detection systems. By aggregating live sessions and eleven realistic presentation-attack classes into one collection, it accelerates development toward iBeta Level 1/2 compliance and strengthens model robustness against the full spectrum of spoofing tactics ![](https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F20109613%2Fb2937149ece6c03c0167b8fc10c110e9%2FFrame%20103.png?generation=1753033787294716&alt=media) ## Why Comprehensive Anti-Spoofing Data? Modern certification pipelines demand proof that a system resists all common attack vectors—not just prints or replays. This dataset delivers those vectors in one place, allowing you to: - Benchmark a model’s true generalisation - Fine-tune against rare but high-impact threats (e.g., silicone or textile masks) - Streamline audits by demonstrating coverage of every ISO 30107-3 attack category ## Dataset Features - **Dataset Size:** ≈ 95 000 videos / image sequences spanning live captures and eleven spoof classes - **Attack Diversity:** 3D paper mask, wrapped 3D mask, photo print, mobile replay, display replay, cut-out 2D mask, silicone mask, latex mask, textile mask - **Active Liveness Cues:** Natural blinks, and head rotations included across live and mask sessions - **Attribute Range:** different combinations of hairstyles, eyewear, facial hair, and accessories. - **Environmental Variability:** Indoor/outdoor scenes under various lighting conditions - **Multi-angle Capture:** Mainly used selfie camera, also back - **Capture Devices:** Footage from flagship and mid-range phones (iPhone 14 / 13 Pro, Galaxy S23, Pixel 7, Redmi Note 12 Pro+, Galaxy A54, Honor 70) - **Additional Flexibility:** Custom re-captures available on request ## 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 💰 ## Technical Specifications - **File Format:** MP4 for video, JPEG/PNG for still sequences; all compatible with mainstream ML frameworks - **Resolution & FPS:** Up to 4K @ 60 fps; balanced presets included for rapid training ## Best Uses Ideal for companies pursuing or maintaining iBeta Level 1/2 certification, research groups exploring new PAD architectures, and vendors stress-testing production face-verification pipelines ## Attack Classes - [Live / Genuine](https://huggingface.co/datasets/AxonData/Selfie_and_Official_ID_Photo_Dataset) Natural faces with spontaneous movements across varied devices and lighting - [3D Paper Mask](https://huggingface.co/datasets/AxonData/3D_paper_mask_attack_dataset_for_Liveness) Folded paper masks with protruding nose/forehead - [Wrapped 3D Print](https://huggingface.co/datasets/AxonData/Wrapped_3D_Attacks) Rigid paper moulds reproducing head geometry - [Photo Print](https://www.kaggle.com/datasets/axondata/photo-print-attacks-dataset-1k-individuals) Glossy still photos at multiple angles—the classic 2D spoof - Cylinder 3D Paper Mask A folded or cylindrical sheet of paper that simulates volume - [Mobile Replay](https://huggingface.co/datasets/AxonData/Replay_attack_mobile) Face videos played on phone screens; includes glare and auto-brightness shifts - [Display Replay](https://huggingface.co/datasets/AxonData/Display_replay_attacks) Attacks via monitors, and laptops - [Cut-out 2D Mask](https://huggingface.co/datasets/AxonData/Anti_Spoofing_Cut_print_attack) Flat printed masks with eye/mouth holes plus active head motion - On-actor Print / Cuts Paper elements (photos, cutouts) are glued directly onto the actor's face - [Silicone](https://huggingface.co/datasets/AxonData/iBeta_level_2_Silicone_masks) and [Latex Masks](https://huggingface.co/datasets/AxonData/Latex_Mask_dataset) High-detail silicone/latex overlays with blinking and subtle mimicry - [Cloth 3D Mask](https://huggingface.co/datasets/AxonData/3d_cloth_face_mask_spoofing_dataset) Elastic fabric masks hugging facial contours during movement - [High-Fidelity Resin Mask](https://huggingface.co/datasets/AxonData/high_precision_3d_resin_masks_real_faces) Hyperrealistic masks with detailed skin texture ## Conclusion This dataset’s scale, breadth of attack types, and real-world capture conditions make it indispensable for anyone building or evaluating biometric anti-spoofing solutions. Deploy it to harden your systems against today’s—and tomorrow’s—most sophisticated presentation attacks