Python for Computer Vision with OpenCV and Deep Learning
Год выпуска: 3/2021
Производитель: Udemy
Сайт производителя:
https://udemy.com/course/python-for-computer-vision-with-opencv-and-deep-learning/
Автор: Jose Portilla, Pierian Training
Продолжительность: 14h 4m 26s
Тип раздаваемого материала: Видеоурок
Язык: Английский
Субтитры: Английский
Описание:
Learn the latest techniques in computer vision with Python , OpenCV , and Deep Learning!
What you'll learn
- Understand basics of NumPy
- Manipulate and open Images with NumPy
- Use OpenCV to work with image files
- Use Python and OpenCV to draw shapes on images and videos
- Perform image manipulation with OpenCV, including smoothing, blurring, thresholding, and morphological operations.
- Create Color Histograms with OpenCV
- Open and Stream video with Python and OpenCV
- Detect Objects, including corner, edge, and grid detection techniques with OpenCV and Python
Requirements
- Must have clear understanding of Python Basics
- Windows 10 or MacOS or Ubuntu
- Must have Install Permissions on Computer
- WebCam if you want to learn the video streaming content
Description
Welcome to the ultimate online course on Python for Computer Vision!
This course is your best resource for learning how to use the Python programming language for Computer Vision.
We'll be exploring how to use Python and the OpenCV (Open Computer Vision) library to analyze images and video data.
The most popular platforms in the world are generating never before seen amounts of image and video data. Every 60 seconds users upload more than 300 hours of video to Youtube, Netflix subscribers stream over 80,000 hours of video, and Instagram users like over 2 million photos! Now more than ever its necessary for developers to gain the necessary skills to work with image and video data using computer vision.
Computer vision allows us to analyze and leverage image and video data, with applications in a variety of industries, including self-driving cars, social network apps, medical diagnostics, and many more.
As the fastest growing language in popularity, Python is well suited to leverage the power of existing computer vision libraries to learn from all this image and video data.
In this course we'll teach you everything you need to know to become an expert in computer vision! This $20 billion dollar industry will be one of the most important job markets in the years to come.
We'll start the course by learning about numerical processing with the NumPy library and how to open and manipulate images with NumPy. Then will move on to using the OpenCV library to open and work with image basics. Then we'll start to understand how to process images and apply a variety of effects, including color mappings, blending, thresholds, gradients, and more.
Then we'll move on to understanding video basics with OpenCV, including working with streaming video from a webcam. Afterwards we'll learn about direct video topics, such as optical flow and object detection. Including face detection and object tracking.
Then we'll move on to an entire section of the course devoted to the latest deep learning topics, including image recognition and custom image classifications. We'll even cover the latest deep learning networks, including the YOLO (you only look once) deep learning network.
This course covers all this and more, including the following topics:
- NumPy
- Images with NumPy
- Image and Video Basics with NumPy
- Color Mappings
- Blending and Pasting Images
- Image Thresholding
- Blurring and Smoothing
- Morphological Operators
- Gradients
- Histograms
- Streaming video with OpenCV
- Object Detection
- Template Matching
- Corner, Edge, and Grid Detection
- Contour Detection
- Feature Matching
- WaterShed Algorithm
- Face Detection
- Object Tracking
- Optical Flow
- Deep Learning with Keras
- Keras and Convolutional Networks
- Customized Deep Learning Networks
- State of the Art YOLO Networks
- and much more!
Feel free to message me on Udemy if you have any questions about the course!
Thanks for checking out the course page, and I hope to see you inside!
Jose
Who this course is for:
- Python Developers interested in Computer Vision and Deep Learning. This course is not for complete python beginners.
Формат видео: MP4
Видео: avc, 1920x1080, 16:9, 30.000 к/с, 2391 кб/с
Аудио: aac lc sbr, 44.1 кгц, 62.8 кб/с, 2 аудио
Изменения/Changes
Version 2019/9 compared to 2019/2 about 200 MB increase in size is. The number of courses and time, change certain it is not.
Version 2021/3 compared to 2019/9, the duration has decreased by 2 minutes. The course quality has been changed from 720p to 1080p.
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