Learners will identify the principles of convolutional neural networks, analyze image data, apply preprocessing techniques, generate facial embeddings, and evaluate recognition models for real-world deployment.
This hands-on course takes participants through the entire journey of building an advanced face recognition application with Keras. Starting with the foundations of CNNs and image preprocessing, learners will discover how to configure their systems, detect faces using MTCNN, and highlight features with bounding boxes and keypoints. The course then transitions into organizing datasets, generating embeddings with FaceNet, and constructing robust classifiers to recognize individual identities.
By completing the course, learners gain practical experience in both face detection and recognition pipelines, bridging theory with implementation. They will acquire the ability to develop scalable computer vision applications, a highly sought-after skill in artificial intelligence and deep learning domains.
What makes this course unique is its end-to-end, project-based approach: instead of focusing on isolated concepts, learners build a fully functional system, ensuring mastery of both foundational techniques and advanced deployment strategies.
This module introduces learners to the foundations of computer vision and face detection using Keras. It covers CNN principles, preprocessing techniques, model handling, and essential system setup, followed by practical implementation of face detection with bounding boxes and keypoints.
涵盖的内容
11个视频4个作业
显示有关单元内容的信息
11个视频•总计82分钟
Introduction to Course•6分钟
CNN for Image Processing•11分钟
Image Preprocessing•10分钟
Saving and Loading the Models•6分钟
Getting System Ready•4分钟
Reading the Image Data•6分钟
Detect Faces MTCNN•9分钟
Draw Bounding Box•8分钟
Draw Key points•8分钟
Apply on Group of Images•6分钟
Extract Faces from Image•7分钟
4个作业•总计60分钟
Graded-Foundations of Face Detection & Computer Vision•30分钟
Getting Started with Face Recognition•10分钟
Preparing the System for Face Detection•10分钟
Advanced Detection Techniques•10分钟
Building & Deploying Face Recognition Systems
第 2 单元•小时 后完成
单元详情
This module focuses on transforming detected faces into numerical embeddings, building classification models, and deploying recognition systems in real-world scenarios. Learners progress from dataset handling to embedding generation, classifier training, and final implementation with Keras and FaceNet.
涵盖的内容
12个视频4个作业
显示有关单元内容的信息
12个视频•总计104分钟
Face Recognition•9分钟
Fashion Dataset•11分钟
Load Faces•7分钟
Load Dataset from Folders•9分钟
Load Dataset from Folders Continue•6分钟
Generate Face Embeddings•12分钟
Face Embeddings•5分钟
Building Classifier on Embeddings•7分钟
Building Classifier on Embeddings Continue•7分钟
Testing for Real Implementation•11分钟
Use Kera's DNN with Face net•11分钟
Conclusion•10分钟
4个作业•总计60分钟
Graded-Building & Deploying Face Recognition Systems•30分钟
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