In the previous section, we saw an introduction to machine learning and an example modeling of a digit image. Now, we will see the different styles of machine learning techniques.

Practical Computer Vision
By :

Practical Computer Vision
By:
Overview of this book
In this book, you will find several recently proposed methods in various domains of computer vision. You will start by setting up the proper Python environment to work on practical applications. This includes setting up libraries such as OpenCV, TensorFlow, and Keras using Anaconda. Using these libraries, you'll start to understand the concepts of image transformation and filtering. You will find a detailed explanation of feature detectors such as FAST and ORB; you'll use them to find similar-looking objects.
With an introduction to convolutional neural nets, you will learn how to build a deep neural net using Keras and how to use it to classify the Fashion-MNIST dataset. With regard to object detection, you will learn the implementation of a simple face detector as well as the workings of complex deep-learning-based object detectors such as Faster R-CNN and SSD using TensorFlow. You'll get started with semantic segmentation using FCN models and track objects with Deep SORT. Not only this, you will also use Visual SLAM techniques such as ORB-SLAM on a standard dataset.
By the end of this book, you will have a firm understanding of the different computer vision techniques and how to apply them in your applications.
Table of Contents (12 chapters)
Preface
A Fast Introduction to Computer Vision
Libraries, Development Platform, and Datasets
Image Filtering and Transformations in OpenCV
What is a Feature?
Convolutional Neural Networks
Feature-Based Object Detection
Segmentation and Tracking
3D Computer Vision
Mathematics for Computer Vision
Machine Learning for Computer Vision
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