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學生對 IBM 提供的 Introduction to Computer Vision with Watson and OpenCV 的評價和反饋

4.5
106 個評分
14 個審閱

課程概述

Computer Vision is one of the most exciting fields in Machine Learning and AI. It has applications in many industries such as self-driving cars, robotics, augmented reality, face detection in law enforcement agencies. In this beginner-friendly course you will understand about computer vision, and will learn about its various applications across many industries. As part of this course you will utilize Python, Watson AI, and OpenCV to process images and interact with image classification models. You will also build, train, and test your own custom image classifiers. This is a hands-on course and involves several labs and exercises. All the labs will be performed on the Cloud and you will be provided access to a Cloud environment completely free of charge. At the end of the course, you will create your own computer vision web app and deploy it to the Cloud. This course does not require any prior Machine Learning or Computer Vision experience, however some knowledge of Python programming language is necessary....

熱門審閱

SS

Aug 20, 2019

This is one of the best course by IBM. I specifically enjoyed Computer Vision modelling and its related project and also enjoyed the way team put in effort for designing this course.

SC

Jul 14, 2019

Great introduction to Visual Recognition and Computer Vision! Lots of examples are provided for me to grasp the concepts behind complicated applications!

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1 - Introduction to Computer Vision with Watson and OpenCV 的 14 個評論(共 14 個)

創建者 Sophia J C

Jul 14, 2019

創建者 Cristian R

Jul 21, 2019

創建者 Bona W

Jul 29, 2019

創建者 Deleted A

Jul 29, 2019

創建者 Suhas S

Aug 20, 2019

創建者 Fadhel A A R A S

Aug 22, 2019

創建者 Marcos Q V

Oct 01, 2019

創建者 Jairo A T O

Sep 13, 2019

創建者 Ben W

Jul 13, 2019

創建者 Jay P

Sep 08, 2019

創建者 Kane H

Oct 06, 2019

創建者 Louis S

Oct 04, 2019

創建者 David B

Sep 16, 2019

創建者 Ranjan B

Sep 24, 2019