Steps towards physical adversarial attacks on facial recognition
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Updated
Oct 3, 2023 - Python
Steps towards physical adversarial attacks on facial recognition
使用MTCNN进行人脸识别,FaceNet进行特征提取的人脸识别系统
eKYC (Electronic Know Your Customer) is a project designed to electronically verify the identity of customers
Real time face recognition Using Facenet , pytorch, Tensorflow
facenet-pytorch + DeepSORT
Train FaceNet model with face masked augmentation on Pytorch.
A FaceRecognition module wrote with facenet_pytorch and Django as web framework
Docker and Flask based API layer + data ingestion pipeline for the Facenet-PyTorch facial recognition library. I.e. simple ML deployment for matching pairs of photos
Real-time detects objects and recognizes faces using deep learning
Face Recognition Attendance System — A Python-based system that automatically marks student attendance using real-time facial recognition. It leverages MTCNN for detection and FaceNet for recognition, stores records in CSV, and supports both CPU and GPU processing.
Detect The Face from the Input image and Recognize the person in Image from very few past examples.
university coursework - app for person identification
Analyzes of the Face Detection models
university coursework - app for person identification
Face recognition and identity verification using deep learning
Python-based face recognition login system with anti-spoofing checks (blink, head, smile)
A production-ready ML-driven facial authentication system with multi-layer security, adaptive learning, and advanced anti-spoofing capabilities.
Architected a live-streaming AI companion integrating speech, vision, LangChain memory, and vector DB, delivering personalized interactions with ~85% emotion recognition and <3s latency and 50+ managed events.
Service for identifying, determining the activity and involvement of the user in the process of distance learning
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