Pose Estimation - Deep Learning using OpenPose

The Complete Guide to Creating your own Pose Estimation Apps: Learn the Full Workflow - Build 5 AI Apps
3.46 (92 reviews)
Udemy
platform
English
language
Software Engineering
category
Pose Estimation - Deep Learning using OpenPose
450
students
1.5 hours
content
May 2020
last update
$29.99
regular price

Why take this course?

🚀 Course Headline: The Complete Guide to Creating your own Pose Estimation Apps: Learn the Full Workflow - Build 5 AI Apps 🚀

Are you ready to dive into the world of Augmented Reality (AR) and Computer Vision with OpenPose? This course is your golden ticket to mastering Pose Estimation using Deep Learning, all without the need for specialized hardware! Whether your passion lies in character animation for video games, assisted driving systems, medical applications, or beyond, this comprehensive guide will equip you with the skills to build your own Pose Estimation apps using just an ordinary webcam.

🧠 What You'll Learn:

  • Fundamentals of Pose Estimation: We start from the basics, ensuring you have a solid foundation in this cutting-edge technology.
  • OpenPose Framework: Step-by-step guidance on implementing OpenPose in real-time applications.
  • Practical Application Development: By the end of the course, you'll have built no less than 5 practical Pose Estimation apps, including:
    1. 🚫 Fall Detection
    2. 👥 People Counting
    3. 🧘‍♀️ Yoga Pose Identification
    4. 💪 Plank Pose Correction
    5. ✅ Automatic Body Ratio Calculation, and more!

🎉 Bonus Content:

  • Learn the fundamentals of Artificial Neural Networks and Convolutional Neural Networks.
  • Access to office hours where your questions are answered directly by the course instructor.
  • Join a community of learners and engage in discussions.

🏆 Elevate Your Career:

  • Earn a Certificate of Completion to showcase your new skills and dedication to learning.
  • Stand out in the job market with proof of your expertise in AI and Pose Estimation.

💸 Risk-Free Learning:

  • The course comes with a 30-day, money-back guarantee. Your satisfaction is our priority!

📚 Course Structure:

  • A mix of theoretical explanations and practical, hands-on projects.
  • Real-world examples and case studies to solidify your understanding.
  • Step-by-step instructions for implementing OpenPose in various scenarios.

🛠️ Tools & Technologies Covered:

  • Python programming language
  • Deep Learning concepts
  • OpenPose framework
  • Webcam integration for real-time applications

🚀 Why Choose This Course?

  • Expert guidance from an experienced instructor.
  • Practical, project-based learning with immediate applications.
  • A supportive community and direct access to help.
  • A certificate of completion that can open doors in the AI job market.

📅 Enroll Now & Transform Your Future: Don't miss out on this opportunity to become an expert in Pose Estimation using OpenPose. Click the enroll button today and join us on this exciting learning journey! 🎯

🌟 Important Notes 🌟

  • This course is heavily focused on practical application and less on theoretical details.
  • We provide a comprehensive overview of OpenPose, with the emphasis on getting you up and running quickly.
  • By the end of this course, not only will you have a solid understanding of Pose Estimation but also a portfolio of apps to show for it! 🎉

Ready to unlock your potential in Pose Estimation and Deep Learning? Let's get started! 🌟

Course Gallery

Pose Estimation - Deep Learning using OpenPose – Screenshot 1
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Pose Estimation - Deep Learning using OpenPose – Screenshot 2
Screenshot 2Pose Estimation - Deep Learning using OpenPose
Pose Estimation - Deep Learning using OpenPose – Screenshot 3
Screenshot 3Pose Estimation - Deep Learning using OpenPose
Pose Estimation - Deep Learning using OpenPose – Screenshot 4
Screenshot 4Pose Estimation - Deep Learning using OpenPose

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2305764
udemy ID
03/04/2019
course created date
22/11/2019
course indexed date
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