[FTUForum.com] [UDEMY] Master Computer Vision™ OpenCV4 In Python With Deep Learning [FTU]

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[FTUForum.com] [UDEMY] Master Computer Vision™ OpenCV4 in Python with Deep Learning [FTU]

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[FTUForum.com] [UDEMY] Master Computer Vision™ OpenCV4 in Python with Deep Learning [FTU].torrent
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92332f4a01938f2642cfa1ef3f2f2674a3cc71e2
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3.7 GB in 94 files
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Uploaded on 26-06-2019 by our crawler pet called "Spidey".
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Description





Learn OpenCV4, Dlib, Keras, TensorFlow & Caffe while completing over 21 projects such as classifiers, detectors & more!



BESTSELLER



Created by: Rajeev Ratan

Last updated: 6/2019

Language: English

Caption (CC): Included

Torrent Contains: 243 Files, 21 Folders

Course Source: https://www.udemy.com/master-computer-vision-with-opencv-in-python/



What you'll learn



• Understand and use OpenCV4 in Python

• How to use Deep Learning using Keras & TensorFlow in Python

• Create Face Detectors & Recognizers and create your own advanced face swaps using DLIB

• Object Detection, Tracking and Motion Analysis

• Create Augmented Reality Apps

• Programming skills such as basic Python and Numpy

• How to use Computer Vision in executing cool startup ideas

• Understand Neural and Convolutional Neural Networks

• Learn to build simple Image Classifiers in Python

• Learn to build an OCR Reader for Credit Cards

• Learn to Perform Neural Style Transfer Using OpenCV

• Learn how to do Multi Object Detection in OpenCV (up to 90 Objects!) using SSDs (Single Shot Detector)

• Learn how to convert black and white Images to color using Caffe

• Learn to build an Automatic Number (License) Plate Recognition (ALPR)

• Learn the Basics of Computer Vision and Image Processing



Course content

all 116 lectures 10:44:57



Requirements



• Little to no programming knowledge is needed, but basic programing knowledge will help

• Windows 10 or Ubuntu or a MacOS system

• A webcam to implement some of the mini projects



Description



Welcome to one of the most thorough and well taught courses on OpenCV, where you'll learn how to Master Computer Vision using newest version of OpenCV4 in Python!



You will be learning:



1. The key concepts of Computer Vision & OpenCV (using the newest version OpenCV 4)

2. To perform image manipulations such as transformations, cropping, blurring, thresholding, edge detection and cropping.

3. To segment images by understanding contours, circle, and line detection. You'll even learn how to approximate contours, do contour filtering and ordering as well as approximations.

4. Use feature detection (SIFT, SURF, FAST, BRIEF & ORB) to do object detection.

5. Implement Object Detection for faces, people & cars.

6. Extract facial landmarks for face analysis, applying filters and face swaps.

7. Implement Machine Learning in Computer Vision for handwritten digit recognition.

8. Implement Facial Recognition.

9. Implement and understand Motion Analysis & Object Tracking.

10. Use basic computational photography techniques for Photo Restoration (eliminate marks, lines, creases, and smudges from old damaged photos).

11. How to become a true computer vision expert by getting started in Deep Learning ( 3+ hours of Deep Learning with Keras in Python)

12. How to develop Computer Vision Product Ideas

13. How to perform Multi Object Detection (90 Object Types)

14. How to colorize Black & White Photos and Video

15. Neural Style Transfers - Apply the artistic style of Van Gogh, Picasso and others to any image even your webcam input

16. How to make your own Automatic Number-Plate Recognition (ALPR

17. Credit Card Number Identification (Build your own OCR Classifier with PyTesseract)



You'll also be implementing 21 awesome projects!



OpenCV Projects Include:



1. Live Drawing Sketch using your webcam

2. Identifying Shapes

3. Counting Circles and Ellipses

4. Finding Waldo

5. Single Object Detectors using OpenCV

6. Car and Pedestrian Detector using Cascade Classifiers

7. Live Face Swapper (like MSQRD & Snapchat filters!!!)

8. Yawn Detector and Counter

9. Handwritten Digit Classification

10. Facial Recognition

11. Ball Tracking

12. Photo-Restoration

13. Automatic Number-Plate Recognition (ALPR)

14. Neural Style Transfer Mini Project

15. Multi Object Detection in OpenCV (up to 90 Objects!) using SSD (Single Shot Detector)

16. Colorize Black & White Photos and Video



Deep Learning Projects Include:



1. Build a Handwritten Digit Classifier

2. Build a Multi Image Classifier

3. Build a Cats vs Dogs Classifier

4. Understand how to boost CNN performance using Data Augmentation

5. Extract and Classify Credit Card Numbers



What previous students have said:



"I'm amazed at the possibilities. Very educational, learning more than what I ever thought was possible. Now, being able to actually use it in a practical purpose is intriguing... much more to learn & apply"



"Extremely well taught and informative Computer Vision course! I've trawled the web looking for Opencv python tutorials resources but this course was by far the best amalgamation of relevant lessons and projects. Loved some of the projects and had lots of fun tinkering them."



"Awesome instructor and course. The explanations are really easy to understand and the materials are very easy to follow. Definitely a really good introduction to image processing."



"I am extremely impressed by this course!! I think this is by far the best Computer Vision course on Udemy. I'm a college student who had previously taken a Computer Vision course in undergrad. This 6.5 hour course blows away my college class by miles!!"



"Rajeev did a great job on this course. I had no idea how computer vision worked and now have a good foundation of concepts and knowledge of practical applications. Rajeev is clear and concise which helps make a complicated subject easy to comprehend for anyone wanting to start building applications."



Why Learn Computer Vision in Python using OpenCV?



Computer vision applications and technology are exploding right now! With several apps and industries making amazing use of the technology, from billion dollar apps such as Pokémon GO, Snapchat and up and coming apps like MSQRD and PRISMA.



Even Facebook, Google, Microsoft, Apple, Amazon, and Tesla are all heavily utilizing computer vision for face & object recognition, image searching and especially in Self-Driving Cars!



As a result, the demand for computer vision expertise is growing exponentially!



However, learning computer vision is hard! Existing online tutorials, textbooks, and free MOOCs are often outdated, using older an incompatible libraries or are too theoretical, making it difficult to understand.



This was my problem when learning Computer Vision and it became incredibly frustrating. Even simply running example code I found online proved difficult as libraries and functions were often outdated.



I created this course to teach you all the key concepts without the heavy mathematical theory while using the most up to date methods.



I take a very practical approach, using more than 50 Code Examples.



At the end of the course, you will be able to build 12 Awesome Computer Vision Apps using OpenCV in Python.



I use OpenCV which is the most well supported open source computer vision library that exists today! Using it in Python is just fantastic as Python allows us to focus on the problem at hand without being bogged down by complex code.



If you're an academic or college student I still point you in the right direction if you wish to learn more by linking the research papers of techniques we use.



So if you want to get an excellent foundation in Computer Vision, look no further.



This is the course for you!



In this course, you will discover the power of OpenCV in Python, and obtain skills to dramatically increase your career prospects as a Computer Vision developer.



You get 3+ Hours of Deep Learning in Computer Vision using Keras, which includes:



• A free Virtual Machine with all Deep Learning Python Libraries such as Keras and TensorFlow pre-installed

• Detailed Explanations on Neural Networks and Convolutional Neural Networks

• Understand how Keras works and how to use and create image datasets

• Build a Handwritten Digit Classifier

• Build a Multi Image Classifier

• Build a Cats vs Dogs Classifier

• Understand how to boost CNN performance using Data Augmentation

• Extract and Classify Credit Card Numbers



As for Updates and support:



I will be continuously adding updates, fixes, and new amazing projects every month!



I will be active daily in the 'questions and answers' area of the course, so you are never on your own.    



So, are you ready to get started? Enroll now and start the process of becoming a master in Computer Vision today!



Who this course is for:



• Beginners who have an interest in computer vision

• College students looking to get a head start before starting computer vision research

• Anyone curious using Deep Learning for Computer Vision

• Entrepreneurs looking to implement computer vision startup ideas

• Hobbyists wanting to make a cool computer vision prototype

• Software Developers and Engineers wanting to develop a computer vision skillset.



For More Udemy Free Courses >>> https://ftuforum.com/

For more Lynda and other Courses >>> https://www.freecoursesonline.me/

Our Forum for discussion >>> https://discuss.ftuforum.com/







Discussion

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Files in this torrent

FILENAMESIZE
0. Websites you may like/How you can help Team-FTU.txt237 B
10. Computational Photography & Make a License Plate Reader/1. Mini Project # 12 - Photo-Restoration.mp414.7 MB
10. Computational Photography & Make a License Plate Reader/1. Mini Project # 12 - Photo-Restoration.vtt8.2 KB
10. Computational Photography & Make a License Plate Reader/2. Mini Project # 13 - Automatic Number-Plate Recognition (ALPR).html861 B
10. Computational Photography & Make a License Plate Reader/2.1 Lecture11.1 Automatic Number-Plate Recognition.zip.zip23.8 KB
11. Conclusion/1. Course Summary and how to become an Expert.mp44.2 MB
11. Conclusion/1. Course Summary and how to become an Expert.vtt4 KB
11. Conclusion/1.1 ResearchPapersandURLS.pdf.pdf96.7 KB
11. Conclusion/2. Latest Advances, 12 Startup Ideas & Implementing Computer VIsion in Mobile Apps.mp415.7 MB
11. Conclusion/2. Latest Advances, 12 Startup Ideas & Implementing Computer VIsion in Mobile Apps.vtt9.4 KB
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/1. Setup your Deep Learning Virtual Machine.mp477.4 MB
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/1. Setup your Deep Learning Virtual Machine.vtt12.4 KB
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/1.1 DeepLearningCV_MOCV.tar.gz.gz135.4 MB
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/1.2 Download VirtualBox.html102 B
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/1.3 Deep Learning Computer Vision OCV.pdf.pdf26.6 MB
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/1.4 Download Your Deep Learning Virtual Machine HERE.html127 B
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/2. Intro to Handwritten Digit Classification (MNIST).mp467.3 MB
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/2. Intro to Handwritten Digit Classification (MNIST).vtt7 KB
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/3. Intro to Multiple Image Classification (CIFAR10).mp427.3 MB
12. BONUS - Deep Learning Computer Vision 1 - Setup a Deep Learning Virtual Machine/3. Intro to Multiple Image Classification (CIFAR10).vtt3.8 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/1. Neural Networks Chapter Overview.mp47.8 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/1. Neural Networks Chapter Overview.vtt1.9 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/10. Epochs, Iterations and Batch Sizes.mp426.1 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/10. Epochs, Iterations and Batch Sizes.vtt4.3 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/11. Measuring Performance and the Confusion Matrix.mp452.1 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/11. Measuring Performance and the Confusion Matrix.vtt8.6 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/12. Review and Best Practices.mp427.1 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/12. Review and Best Practices.vtt5.1 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/2. Machine Learning Overview.mp452.3 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/2. Machine Learning Overview.vtt52.3 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/3. Neural Networks Explained.mp423.4 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/3. Neural Networks Explained.vtt4.7 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/4. Forward Propagation.mp463.3 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/4. Forward Propagation.vtt9.9 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/5. Activation Functions.mp459.7 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/5. Activation Functions.vtt10.2 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/6. Training Part 1 – Loss Functions.mp458.4 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/6. Training Part 1 – Loss Functions.vtt10.4 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/7. Training Part 2 – Backpropagation and Gradient Descent.mp472.7 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/7. Training Part 2 – Backpropagation and Gradient Descent.vtt11.7 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/8. Backpropagation & Learning Rates – A Worked Example.mp499.9 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/8. Backpropagation & Learning Rates – A Worked Example.vtt15.5 KB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/9. Regularization, Overfitting, Generalization and Test Datasets.mp4118.4 MB
13. BONUS - Deep Learning Computer Vision 2 - Introduction to Neural Networks/9. Regularization, Overfitting, Generalization and Test Datasets.vtt18.4 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/1. Convolutional Neural Networks Chapter Overview.mp45.1 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/1. Convolutional Neural Networks Chapter Overview.vtt1.3 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/2. Introduction to Convolutional Neural Networks (CNNs).mp436.7 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/2. Introduction to Convolutional Neural Networks (CNNs).vtt6.4 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/3. Convolutions & Image Features.mp4102.4 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/3. Convolutions & Image Features.vtt15.4 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/4. Depth, Stride and Padding.mp446.6 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/4. Depth, Stride and Padding.vtt8.2 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/5. ReLU.mp410.9 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/5. ReLU.vtt2.2 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/6. Pooling.mp428.8 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/6. Pooling.vtt5.7 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/7. The Fully Connected Layer.mp413.9 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/7. The Fully Connected Layer.vtt2.7 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/8. Training CNNs.mp427.1 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/8. Training CNNs.vtt3.7 KB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/9. Designing Your Own CNN.mp424.3 MB
14. BONUS - Deep Learning Computer Vision 3 - Convolutional Neural Networks (CNNs)/9. Designing Your Own CNN.vtt4.8 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/1. Introduction to Keras & Tensorflow.mp45.6 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/1. Introduction to Keras & Tensorflow.vtt1.2 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/10. Saving and Loading Your Model.mp429.5 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/10. Saving and Loading Your Model.vtt3.9 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/11. Displaying Your Model Visually.mp425.5 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/11. Displaying Your Model Visually.vtt3.8 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/12. Building a Simple Image Classifier using CIFAR10.mp474.3 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/12. Building a Simple Image Classifier using CIFAR10.vtt74.4 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/2. Building a CNN in Keras.mp473.7 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/2. Building a CNN in Keras.vtt15.8 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/3. Building a Handwriting Recognition CNN.mp411.1 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/3. Building a Handwriting Recognition CNN.vtt2.2 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/4. Loading Our Data.mp452.9 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/4. Loading Our Data.vtt7.5 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/5. Getting our data in ‘Shape’.mp433.8 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/5. Getting our data in ‘Shape’.vtt5.2 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/6. Hot One Encoding.mp418.2 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/6. Hot One Encoding.vtt3.5 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/7. Building & Compiling Our Model.mp436.2 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/7. Building & Compiling Our Model.vtt4.8 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/8. Training Our Classifier.mp440.8 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/8. Training Our Classifier.vtt6.4 KB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/9. Plotting Loss and Accuracy Charts.mp425.6 MB
15. BONUS - Deep Learning Computer Vision 4 - Build CNNs in Python using Keras/9. Plotting Loss and Accuracy Charts.vtt4.1 KB
16. BONUS - Deep Learning Computer Vision 5 - Build a Cats vs Dogs Classifier/1. Data Augmentation Chapter Overview.mp43.9 MB
16. BONUS - Deep Learning Computer Vision 5 - Build a Cats vs Dogs Classifier/1. Data Augmentation Chapter Overview.vtt1.3 KB
16. BONUS - Deep Learning Computer Vision 5 - Build a Cats vs Dogs Classifier/2. Splitting Data into Test and Training Datasets.mp4103.8 MB
16. BONUS - Deep Learning Computer Vision 5 - Build a Cats vs Dogs Classifier/2. Splitting Data into Test and Training Datasets.vtt12.4 KB
16. BONUS - Deep Learning Computer Vision 5 - Build a Cats vs Dogs Classifier/3. Train a Cats vs. Dogs Classifier.mp444.8 MB
16. BONUS - Deep Learning Computer Vision 5 - Build a Cats vs Dogs Classifier/3. Train a Cats vs. Dogs Classifier.vtt5.5 KB
16. BONUS - Deep Learning Computer Vision 5 - Build a Cats vs Dogs Classifier/4. Boosting Accuracy with Data Augmentation.mp449.1 MB
16. BONUS - Deep Learning Computer Vision 5 - Build a Cats vs Dogs Classifier/4. Boosting Accuracy with Data Augmentation.vtt6.7 KB

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