Building and deploying a Tensorflow (Keras) model for face recognition with Azure ML
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Updated
Oct 29, 2018 - Python
Building and deploying a Tensorflow (Keras) model for face recognition with Azure ML
Face recognition using Facenet Model
Face recognition system using FaceNet and OpenCV.
This is a simple example for face verification using facenet implemented by davidsandberg
This is a kaggle Challenge. Given a pair of images of 2 faces we have to determine whether they are related or not. Here I have used a Siamese network over VGG-facenet to tackle this problem.
using mxnet gluon api build mobilefacenet model to training face data
This repository contains program for face recognition using transfer learning.
Deep_learning specialization course by andrew NG from Coursera
Create your own databse, compile tripletloss with pre-trained FaceNet model, run real-time face recognition on local host
Face Recognition using FaceNet
Face recognition using Deep learning methods
Face detection, and recognition using MTCNN,FACENET, HAAR CASCADES and CAFFE MODELS
Face Detection using Open CV library on House Full 4 movie trailer.
Flask based web application to manage attendance using face recognition
Education/Institutional level Project about getting attendance done by face recognition (FaceNet Model) and added functionalities like Getting pdf or excel sheet of Attendance
Face Recognition and Classification Using FaceNet and MTCNN
This project uses State of the Art Facial Recognition model FaceNet to recognise Avengers from the Avenger Dataset.
Coursera - CNN Programming Assignment: In this project, we will build a face recognition system with FaceNet. Face recognition is a method of identifying or verifying the identity of an individual using their face in photos, video, or in real-time
Design of a Face recognition payment system prototype
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