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Build Self Checkout Machine & Virtual Keyboard with OpenCV
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Build Self Checkout Machine & Virtual Keyboard with OpenCV

Christ Raharja
4(2.3K students)
Self-paced
All Levels

About this course

Learn how to build self checkout machine and virtual keyboard using OpenCV, CNN, Keras, Tkinter, and MediaPipe

Skills you'll gain

English (US)

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Course Information

Level: All Levels

Suitable for learners at this level

Duration: Self-paced

Total course content

Instructor: Christ Raharja

Expert course creator

This course includes:

  • 📹Video lectures
  • đź“„Downloadable resources
  • 📱Mobile & desktop access
  • 🎓Certificate of completion
  • ♾️Lifetime access
$0$84.99

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