11.6: Computer Vision: Motion Detection - Processing Tutorial
In this computer vision tutorial, I show how to analyze the pixels of a video to detect motion. This technique is also known as frame differencing. Support this channel on Patreon: / codingtrain Send me your questions and coding challenges! Contact: / shiffman Links discussed in this video: Computer Vision for Artists and Designers Essay by Golan Levin: http://www.flong.com/texts/essays/ess... Image Processing in Computer Vision: http://openframeworks.cc/ofBook/chapt... Source Code for the Video Lessons: https://github.com/CodingTrain/Rainbo... p5.js: https://p5js.org/ Processing: https://processing.org For More Computer Vision videos: • Computer Vision For More Coding Challenges: • Coding Challenges Help us caption & translate this video! http://amara.org/v/QbrN/ 📄 Code of Conduct: https://github.com/CodingTrain/Code-o...

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