Face Detection with OpenCV in Python
Learn Face Detection with OpenCV in Python from basics in this free online training. This free course is taught hands-on by experts. Learn about Face Detection & its Applications. Best for Beginners. Start Now!
Skills you’ll Learn
About this Course
OpenCV-Python is a Python library specially designed for solving computer vision problems. With the increase in face detection and recognition systems usage, you must be aware of the trends and learn about these domains theoretically and practically. This free Face Detection with OpenCV in Python course will help you gain an ample amount of theoretical and empirical knowledge, which will help you better understand the concept of computer vision
.
Several highly appreciated universities worldwide have partnered with Great Learning and designed various Degree and Postgraduate programs. Enroll in the Best Artificial Intelligence and Machine Learning Courses that provide learners with standard education from highly experienced faculties. Our primary goal is to guide learners to successful AIML professionals.
Course Outline
This chapter focuses on numerous applications of face recognition in different sectors such as security checking, attendance system, forensic investigations, and validations. Further, you will understand other face recognition applications like face detection in ATMs, traveling by plane, and finding missing people.
In this module, you will be familiarized with the term Deep Learning used for face recognition. Moving ahead, you will understand the steps of implementing face recognition using deep learning. Lastly, the tutor will present some examples of real-life based scenarios to help you understand better.
This chapter will get you introduced to OpenCV and its application with the help of an example. Next, you will understand how Machine Learning algorithms are applied to OpenCV. Later, you will get to know the steps of using OpenCV. Lastly, the tutor will brief you on some important key concepts of OpenCV.
What our learners enjoyed the most
Skill & tools
62% of learners found all the desired skills & tools