LEARNING FOR LIFE

Get Yourself a Better Life! Free eLearning Download

  • Technical
    • Internet & Networking
    • Security & Hacking
    • AI | Artificial intelligence
    • OS & Server
    • WEB/HTML/CSS/AJAX
    • Database & SQL
    • Programming
    • Perl & PHP
    • .Net & Java
    • Mobile Development
    • C/C++/C#
    • Game Development
    • Unix & Linux
    • MAC OS X
    • Windows
    • OFFICE
    • Operation Systems
    • Hardware
  • Graphic & Media
    • Photography
    • 3D
    • Adobe Product Training
    • Art & Drawing & Painting
    • Film & Film Making
    • Game Designing
    • Music Training
    • Tutorials for designer
  • Business
    • Business & Investing
    • Writing & Affiliate
    • Marketing
    • Sales
    • Economics & Finances
    • Seo & Site Traffic
    • Stock & ForEX
  • Life Stype
    • Self Improvement | MP
    • Mindset | NLP
    • Fashion / Clothing / Grooming
    • Seduction
    • Fighting / Martial Arts
    • Food / Drink / Cooking
    • Health / Fitness / Massage
    • Languages / Accents
    • Magic / Illusions / Tricks
    • Psychology / Body Language
  • Engineering & Science
    • Cultures & History
    • Electrical & Architecture
    • Mathematics & Physics
    • Medical
  • Entertainment
    • Comic
    • Manga
    • Novel
    • Magazine
  • PC Game
    • Mac Game
    • Xbox Game
    • Play Station Game
Home » Ebooks & Tutorials » Technical » Development Training » Face, Age, Gender, Emotion Recognition Using Facenet Model | Udemy

Face, Age, Gender, Emotion Recognition Using Facenet Model | Udemy

30/05/2025 Tut4DL Leave a Comment


Face, Age, Gender, Emotion Recognition Using Facenet Model | Udemy [Update 01/2025]
English | Size: 585 MB
Genre: eLearning

Complete Facial Recognition, Age, Gender, Emotion System Using DeepFace Model

What you’ll learn
Understand the basics of facial recognition technology and its applications.
Extract age, gender, and emotional data from images and video streams.
Process and analyze real-time data using DeepFace for practical applications.
Test and deploy the system in real-world scenarios.

Unlock the power of Artificial Intelligence (AI) and revolutionize your understanding of facial recognition systems with our comprehensive course, “Face, Age, Gender, Emotion Recognition Using Facenet Model” This course is meticulously designed for beginners and professionals aiming to build cutting-edge AI applications using Python and the popular DeepFace library.

With facial recognition technology being pivotal in security, healthcare, marketing, and entertainment, this course provides you with the expertise to design and implement systems capable of recognizing faces, predicting age, identifying gender, and detecting emotions—all in one solution.

Why Enroll in This Course?

Whether you’re a developer, data scientist, student, or AI enthusiast, this course takes you from the basics to an advanced level, ensuring you have the confidence to apply these technologies in real-world scenarios.

Key Features of the Course:

  1. Learn Facial Recognition Basics:
    • Understand the science behind facial recognition.
    • Explore key concepts like feature extraction and face matching.
  2. Master the DeepFace Library:
    • Set up and use the DeepFace library, a leading tool for facial analysis.
    • Implement robust models for facial recognition and emotion detection.
  3. Build an All-in-One System:
    • Develop a system that detects age, gender, and emotions with high precision.
    • Work with real-time data for practical applications.
  4. Hands-On Projects and Implementation:
    • Get hands-on coding experience in Python.
    • Analyze images, video streams, and live feeds.
  5. Deploy Your Solution:
    • Learn best practices for deploying your system.
    • Make your project ready for professional or academic use.

Don’t miss this chance to become an expert in facial recognition and AI-driven applications. Join the course now and gain lifetime access to practical knowledge, coding demonstrations, and valuable tips to excel in your AI career.

Who this course is for:

  • This course is designed for developers, students, and professionals
DOWNLOAD FROM RAPIDGATOR

https://rapidgator.net/file/ed129b81dfa7a27524147ca24d750c74/UD-FaceAgeGenderEmotionRecognitionUsingFacenetModel2025-1.part1.rar.html
https://rapidgator.net/file/c0fd410aa396910f2492374dffe6fcc9/UD-FaceAgeGenderEmotionRecognitionUsingFacenetModel2025-1.part2.rar.html

DOWNLOAD FROM TURBOBIT

https://trbt.cc/o09kov4hjono/UD-FaceAgeGenderEmotionRecognitionUsingFacenetModel2025-1.part1.rar.html
https://trbt.cc/v6tbuuocgl4h/UD-FaceAgeGenderEmotionRecognitionUsingFacenetModel2025-1.part2.rar.html

DOWNLOAD FROM NITROFLARE

https://nitroflare.com/view/5C7BEC23F62AFD6/UD-FaceAgeGenderEmotionRecognitionUsingFacenetModel2025-1.part1.rar
https://nitroflare.com/view/9F24D49ECF61468/UD-FaceAgeGenderEmotionRecognitionUsingFacenetModel2025-1.part2.rar

If any links die or problem unrar, send request to
https://forms.gle/e557HbjJ5vatekDV9

Development Training Facenet Model

← Linkedin Learning – Debugging Rust Code With AI Udemy – Data Structures and Algorithms: In-Depth DSA using Python →

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

This site uses Akismet to reduce spam. Learn how your comment data is processed.

  • Udemy – Mastering Power BI: From Data to Dynamic Dashboards
  • Udemy – Terraform on Azure with IaC DevOps SRE – Real-World 25 Demos
  • Udemy – Full Excel Journey Master Basics to Advanced Functions
  • Quest – SafeGuard BootCamp
  • Udemy – Multi-Modular Ecommerce App for Android & iOS (KMP)

Meta

  • Log in
  • Entries feed
  • Comments feed
  • WordPress.org

2019 2020 2021 2022 2023 2024 Advanced AWS Azure BBC Beginners BitBook BOOKWARE Certified Cisco Cloud Comic Complete Course Data Design eBook Fundamentals Guide Hybrid iLEARN Introduction JavaScript Learn Learning LinkedIn Linux Lynda Masterclass Microsoft Packt Pluralsight Programming Python Security Skillshare Training Udemy Using XQZT

Copyright © 2025 · Equilibre on Genesis Framework · WordPress · Log in