Mask Detection Using Python | Face Mask Detection Using OpenCV Python | Simplilearn

In this video, we are going to cover how to create a mask detection system using OpenCV Python. This video will help you to understand what is object detection system, after which will do a hands-on lab demo to create a mask detection system using OpenCV python.

"What is object detection?

A computer vision technique called object detection is used to find occurrences of objects in pictures or movies. Object detection algorithms frequently use machine learning or deep learning to generate useful results.

Humans can quickly identify and pinpoint objects of interest when viewing photos or videos. Using a computer, object detection aims to simulate this intelligence.

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