passive-liveness topic

List passive-liveness repositories

FaceLivenessDetection-Docker

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This repository is a docker project for 3D passive face liveness detection (face anti-spoofing).

FaceRecognition-Android

459
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262
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Face recognition SDK Android with 3D passive face liveness detection(anti-spoofing). Standard Face Recognition SDK This repo supports the following functionality: face matching, face compare, face com...

FaceLivenessDetection-Android

52
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The project for 3D passive face liveness detection, face anti-spoofing, face fraudulent check, face liveness check and face fraud detection on Android.

FaceLivenessDetection-Linux-SDK

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iBeta (Level 2) Certified, Single-Image Based Face Liveness Detection (Face Anti Spoofing) Server SDK

ID-Document-LivenessDetection-Linux-SDK

111
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93
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MiniAiLive's Complete Document Liveness Detection Solution for Digital Onboarding

FaceLivenessDetection-Linux

388
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323
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Liveness detection SDK Linux - iBeta level 2 compliant 3D passive liveness detection engine which can detect printed photos, video replay, 3D masks, and deepfake threats

FaceLivenessDetection-Android

322
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257
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Liveness detection SDK Android - iBeta level 2 compliant 3D passive liveness detection engine which can detect printed photos, video replay, 3D masks, and deepfake threats

FaceRecognition-iOS

28
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15
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Face recognition iOS with 3D passive liveness detection(anti-spoofing). This repo supports the following functionality: face matching, face compare, face comparison, facial recognition, feature extrac...

FaceLivenessDetection-iOS

21
Stars
14
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The project for 3D passive face liveness detection, face anti-spoofing, face fraudulent check, face liveness check and face fraud detection on iOS

Face-Liveness-Detection-SDK

23
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17
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This SDK is a powerful 3D passive liveness detection solution that accurately detects presentation attacks, including printed photos, cutout masks, digital and video replay attacks, and 3D masks.