Book Image

Applied Deep Learning and Computer Vision for Self-Driving Cars

By : Sumit Ranjan, Dr. S. Senthamilarasu
Book Image

Applied Deep Learning and Computer Vision for Self-Driving Cars

By: Sumit Ranjan, Dr. S. Senthamilarasu

Overview of this book

Thanks to a number of recent breakthroughs, self-driving car technology is now an emerging subject in the field of artificial intelligence and has shifted data scientists' focus to building autonomous cars that will transform the automotive industry. This book is a comprehensive guide to use deep learning and computer vision techniques to develop autonomous cars. Starting with the basics of self-driving cars (SDCs), this book will take you through the deep neural network techniques required to get up and running with building your autonomous vehicle. Once you are comfortable with the basics, you'll delve into advanced computer vision techniques and learn how to use deep learning methods to perform a variety of computer vision tasks such as finding lane lines, improving image classification, and so on. You will explore the basic structure and working of a semantic segmentation model and get to grips with detecting cars using semantic segmentation. The book also covers advanced applications such as behavior-cloning and vehicle detection using OpenCV, transfer learning, and deep learning methodologies to train SDCs to mimic human driving. By the end of this book, you'll have learned how to implement a variety of neural networks to develop your own autonomous vehicle using modern Python libraries.
Table of Contents (18 chapters)
1
Section 1: Deep Learning Foundation and SDC Basics
5
Section 2: Deep Learning and Computer Vision Techniques for SDC
10
Section 3: Semantic Segmentation for Self-Driving Cars
13
Section 4: Advanced Implementations

The accuracy report

In this step, we will check the accuracy report of the model. We will get the following values.

Accuracy: The accuracy is the most important and popular metric for model validation. The ratio of the correctly predicted observation to the total observation is called the accuracy. In general, a high accuracy model is not always preferable, as the accuracy metric only works well with symmetric datasets where values of false positives and false negatives are almost the same.

Now, we will have a look at the formula of accuracy:

Here, we have the following: 

  • TP is true positive
  • TN is true negative
  • FP is false positive
  • TP is true positive

Precision: The ratio of correctly predicted positive observations (TP) to the total predicted positive observations (TP + FP) is called precision. This is the formula for precision:

Recall: The ratio of correctly predicted positive observations (TP) to all the observations in an actual class (TP + FN) is...