Log In
Or create an account -> 
Imperial Library
  • Home
  • About
  • News
  • Upload
  • Forum
  • Help
  • Login/SignUp

Index
Title Page Copyright and Credits
Mastering OpenCV 4 with Python
About Packt
Why subscribe? Packt.com
Contributors
About the author About the reviewers Packt is searching for authors like you
Preface
Who this book is for What this book covers To get the most out of this book
Download the example code files Download the color images Conventions used
Get in touch
Reviews
Section 1: Introduction to OpenCV 4 and Python Setting Up OpenCV
Technical requirements
Code testing specifications Hardware specifications
Understanding Python
Introducing OpenCV Contextualizing the reader
A theoretical introduction to the OpenCV library
OpenCV modules OpenCV users OpenCV applications Why citing OpenCV in your research work
Installing OpenCV, Python, and other packages
Installing Python, OpenCV, and other packages globally Installing Python
Installing Python on Linux Installing Python on Windows Installing OpenCV Installing OpenCV on Linux Installing OpenCV on Windows
Testing the installation
Installing Python, OpenCV, and other packages with virtualenv Python IDEs to create virtual environments with virtualenv Anaconda/Miniconda distributions and conda package–and environment-management system  Packages for scientific computing, data science, machine learning, deep learning, and computer vision Jupyter Notebook
Trying Jupiter Notebook online  Installing the Jupyter Notebook Installing Jupyter using Anaconda Installing Jupyter with pip
The OpenCV and Python project structure Our first Python and OpenCV project Summary Questions Further reading
Image Basics in OpenCV
Technical requirements A theoretical introduction to image basics
Main problems in image processing Image-processing steps Images formulation
Concepts of pixels, colors, channels, images, and color spaces
File extensions
The coordinate system in OpenCV Accessing and manipulating pixels in OpenCV
Accessing and manipulating pixels in OpenCV with BGR images Accessing and manipulating pixels in OpenCV with grayscale images
BGR order in OpenCV Summary Questions Further reading
Handling Files and Images
Technical requirements An introduction to handling files and images
sys.argv Argparse – command-line option and argument parsing
Reading and writing images
Reading images in OpenCV Reading and writing images in OpenCV
Reading camera frames and video files
Reading camera frames Accessing some properties of the capture object Saving camera frames Reading a video file Reading from an IP camera
Writing a video file
Calculating frames per second Considerations for writing a video file
Playing with video capture properties
Getting all the properties from the video capture object Using the properties – playing a video backwards
Summary Questions Further reading
Constructing Basic Shapes in OpenCV
Technical requirements A theoretical introduction to drawing in OpenCV Drawing shapes
Basic shapes – lines, rectangles, and circles
Drawing lines Drawing rectangles Drawing circles
Understanding advanced shapes
Drawing a clip line Drawing arrows Drawing ellipses Drawing polygons
Shift parameter in drawing functions lineType parameter in drawing functions
Writing text
Drawing text Using all OpenCV text fonts More functions related to text
Dynamic drawing with mouse events
Drawing dynamic shapes Drawing both text and shapes Event handling with Matplotlib
Advanced drawing Summary Questions Further reading
Section 2: Image Processing in OpenCV Image Processing Techniques
Technical requirements Splitting and merging channels in OpenCV Geometric transformations of images
Scaling an image Translating an image Rotating an image Affine transformation of an image Perspective transformation of an image Cropping an image
Image filtering
Applying arbitrary kernels Smoothing images
Averaging filter Gaussian filtering Median filtering Bilateral filtering
Sharpening images Common kernels in image processing Creating cartoonized images
Arithmetic with images
Saturation arithmetic Image addition and subtraction Image blending Bitwise operations
Morphological transformations
Dilation operation Erosion operation Opening operation Closing operation Morphological gradient operation Top hat operation Black hat operation Structuring element Applying morphological transformations to images
Color spaces
Showing color spaces Skin segmentation in different color spaces
Color maps
Color maps in OpenCV Custom color maps Showing the legend for the custom color map
Summary Questions Further reading
Constructing and Building Histograms
Technical requirements A theoretical introduction to histograms
Histogram terminology
Grayscale histograms
Grayscale histograms without a mask Grayscale histograms with a mask
Color histograms Custom visualizations of histograms Comparing OpenCV, NumPy, and Matplotlib histograms Histogram equalization
Grayscale histogram equalization Color histogram equalization
Contrast Limited Adaptive Histogram Equalization  Comparing CLAHE and histogram equalization Histogram comparison Summary Questions Further reading
Thresholding Techniques
Technical requirements
Installing scikit-image Installing SciPy
Introducing thresholding techniques Simple thresholding 
Thresholding types Simple thresholding applied to a real image
Adaptive thresholding Otsu's thresholding algorithm The triangle binarization algorithm Thresholding color images Thresholding algorithms using scikit-image
Introducing thresholding with scikit-image Trying out more thresholding techniques with scikit-image
Summary Questions Further reading
Contour Detection, Filtering, and Drawing
Technical requirements An introduction to contours Compressing contours Image moments
Some object features based on moments Hu moment invariants Zernike moments
More functionality related to contours Filtering contours Recognizing contours Matching contours Summary Questions Further reading
Augmented Reality
Technical requirements An introduction to augmented reality Markerless-based augmented reality
Feature detection Feature matching Feature matching and homography computation to find objects
Marker-based augmented reality
Creating markers and dictionaries Detecting markers Camera calibration Camera pose estimation Camera pose estimation and basic augmentation Camera pose estimation and more advanced augmentation
Snapchat-based augmented reality
Snapchat-based augmented reality OpenCV moustache overlay Snapchat-based augmented reality OpenCV glasses overlay
QR code detection Summary Questions Further reading
Section 3: Machine Learning and Deep Learning in OpenCV Machine Learning with OpenCV
Technical requirements An introduction to machine learning
Supervised machine learning Unsupervised machine learning Semi-supervised machine learning
k-means clustering
Understanding k-means clustering Color quantization using k-means clustering
k-nearest neighbor
Understanding k-nearest neighbors Recognizing handwritten digits using k-nearest neighbor 
Support vector machine
Understanding SVM Handwritten digit recognition using SVM
Summary Questions Further reading
Face Detection, Tracking, and Recognition
Technical requirements
Installing dlib Installing the face_recognition package Installing the cvlib package
Face processing introduction Face detection
Face detection with OpenCV Face detection with dlib Face detection with face_recognition Face detection with cvlib
Detecting facial landmarks
Detecting facial landmarks with OpenCV Detecting facial landmarks with dlib Detecting facial landmarks with face_recognition
Face tracking
Face tracking with the dlib DCF-based tracker Object tracking with the dlib DCF-based tracker
Face recognition
Face recognition with OpenCV Face recognition with dlib Face recognition with face_recognition
Summary Questions Further reading
Introduction to Deep Learning
Technical requirements
Installing TensorFlow Installing Keras
Deep learning overview for computer vision tasks
Deep learning characteristics Deep learning explosion Deep learning for image classification Deep learning for object detection 
Deep learning in OpenCV
Understanding cv2.dnn.blobFromImage() Complete examples using the OpenCV DNN face detector OpenCV deep learning classification
AlexNet for image classification GoogLeNet for image classification ResNet for image classification SqueezeNet for image classification
OpenCV deep learning object detection
MobileNet-SSD for object detection YOLO for object detection
The TensorFlow library
Introduction example to TensorFlow Linear regression in TensorFlow Handwritten digits recognition using TensorFlow
The Keras library
Linear regression in Keras Handwritten digit recognition in Keras
Summary Questions Further reading
Section 4: Mobile and Web Computer Vision Mobile and Web Computer Vision with Python and OpenCV
Technical requirements
Installing the packages
Introduction to Python web frameworks Introduction to Flask Web computer vision applications using OpenCV and Flask
A minimal example to introduce OpenCV and Flask  Minimal face API using OpenCV Deep learning cat detection API using OpenCV
Deep learning API using Keras and Flask
Keras applications Deep learning REST API using Keras Applications
Deploying a Flask application to the cloud Summary Questions Further reading
Assessments
Chapter 1 Chapter 2  Chapter 3 Chapter 4 Chapter 5 Chapter 6 Chapter 7 Chapter 8 Chapter 9 Chapter 10 Chapter 11 Chapter 12 Chapter 13
Other Books You May Enjoy
Leave a review - let other readers know what you think
  • ← Prev
  • Back
  • Next →
  • ← Prev
  • Back
  • Next →

Chief Librarian: Las Zenow <zenow@riseup.net>
Fork the source code from gitlab
.

This is a mirror of the Tor onion service:
http://kx5thpx2olielkihfyo4jgjqfb7zx7wxr3sd4xzt26ochei4m6f7tayd.onion