Discover how to build advanced OpenCV3 projects with Python
About This Video
Practical end-to-end projects covering an important computer vision problem
Step-by-step guide to creating computer vision applications
Program advanced computer vision applications in Python using different features of the OpenCV library
In Detail
OpenCV is a native cross-platform C++ library for Computer Vision, Machine Learning, and image processing. It is …
Building Advanced OpenCV3 Projects with Python
Video description
Discover how to build advanced OpenCV3 projects with Python
About This Video
Practical end-to-end projects covering an important computer vision problem
Step-by-step guide to creating computer vision applications
Program advanced computer vision applications in Python using different features of the OpenCV library
In Detail
OpenCV is a native cross-platform C++ library for Computer Vision, Machine Learning, and image processing. It is increasingly being adopted for development in Python.
This course features some trending applications of vision and deep learning and will help you master these techniques. You will learn how to retrieve structure from motion (sfm) and you will also see how we can build an application to capture 2D images and join them dynamically to achieve street views by capturing camera projection angles and relative image positions. You will also learn how to track your head in 3D in real-time, and perform facial recognition against a goldenset. You will also build an app to capture facial emotions based on a CovNet.
Next, you'll generate panoramas using image stitching and we extend this concept by generating a map based on the trajectory of ISS. You'll also learn to build an application to capture beautiful panoramas and also achieve AR effects. You then delve into one of the most trending domains of computer vision: autonomous cars. You'll learn about various architectures and develop the skills to detect lanes, and segment and track vehicles in traffic.You will be using Carla, which is a open driving simulator by Intel, for your project to train a car learn how to drive itself using an end-to-end model.
By the end of this course you will have learned to perform 3D reconstruction by stitching multiple 2D images and recovering camera projection angles. You will also have learned to capture facial landmark points and recognize emotion in images, including in real time. You will also have learned to generate a panorama of a scene and augment a camera view with virtual objects. You will be familiar with the field of self-driving cars and its history, and will have trained a car to drive itself in a simulator.
Audience
This video course is for anyone with a basic knowledge of OpenCV who would like to enhance their knowledge to develop advanced practical applications
Chapter 2 : Building an Android App with Emotion-Based Selfie Filters
Real-Time Face Detection Based on Eigenfaces
3D Head Pose Estimation
Detecting Cats and Faces Using Haar Cascades
Facial Landmark Detection Using Dlib Library
Face Morphology, Averaging, and Swapping
Expressions - A Selfie Camera App
Chapter 3 : Building a Camera App withPanorama, HDR and AR Features
Image Stitching
Aerial Video Montage
Marker-Based Augmented Reality
Markerless Augmented Reality
High-Dynamic Range (HDR) Imaging
Building a Panorama App
Chapter 4 : Imitation Learning
Introduction to Self-Driving Cars
Sensors and Measurements
Self-Driving Car Architectures
Understanding Perception in Self-Driving Cars
Learning to Drive Using a CNN
Building a Self-Driving Car Based on Imitation Learning
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