Book Image

Mastering Computer Vision with TensorFlow 2.x

By : Krishnendu Kar
Book Image

Mastering Computer Vision with TensorFlow 2.x

By: Krishnendu Kar

Overview of this book

Computer vision allows machines to gain human-level understanding to visualize, process, and analyze images and videos. This book focuses on using TensorFlow to help you learn advanced computer vision tasks such as image acquisition, processing, and analysis. You'll start with the key principles of computer vision and deep learning to build a solid foundation, before covering neural network architectures and understanding how they work rather than using them as a black box. Next, you'll explore architectures such as VGG, ResNet, Inception, R-CNN, SSD, YOLO, and MobileNet. As you advance, you'll learn to use visual search methods using transfer learning. You'll also cover advanced computer vision concepts such as semantic segmentation, image inpainting with GAN's, object tracking, video segmentation, and action recognition. Later, the book focuses on how machine learning and deep learning concepts can be used to perform tasks such as edge detection and face recognition. You'll then discover how to develop powerful neural network models on your PC and on various cloud platforms. Finally, you'll learn to perform model optimization methods to deploy models on edge devices for real-time inference. By the end of this book, you'll have a solid understanding of computer vision and be able to confidently develop models to automate tasks.
Table of Contents (18 chapters)
1
Section 1: Introduction to Computer Vision and Neural Networks
6
Section 2: Advanced Concepts of Computer Vision with TensorFlow
11
Section 3: Advanced Implementation of Computer Vision with TensorFlow
14
Section 4: TensorFlow Implementation at the Edge and on the Cloud

Content Recognition Using Local Binary Patterns

Local Binary Patterns (LBP) was first introduced in the International Pattern Recognition Conference in 1994 by Timo Ojala, Matti Pietik äinen, and David Harwood in the paper Performance evaluation of texture measures with classification based on Kullback discrimination of distributions (https://ieeexplore.ieee.org/document/576366).

In this chapter, you will learn how to create an LBP image type binary feature descriptor and the LBP histogram for the classification of textured and non-textured images. You will learn about the different methods you can use to calculate the differences between histograms in order to find a match between various images and how to tune LBP parameters to optimize its performance.

This chapter will cover the following topics:

  • Processing images using LBP
  • Applying LBP to texture recognition
  • Matching...