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Applied Deep Learning and Computer Vision for Self-Driving Cars

You're reading from  Applied Deep Learning and Computer Vision for Self-Driving Cars

Product type Book
Published in Aug 2020
Publisher Packt
ISBN-13 9781838646301
Pages 332 pages
Edition 1st Edition
Languages
Authors (2):
Sumit Ranjan Sumit Ranjan
Profile icon Sumit Ranjan
Dr. S. Senthamilarasu Dr. S. Senthamilarasu
Profile icon Dr. S. Senthamilarasu
View More author details

Table of Contents (18) Chapters

Preface 1. Section 1: Deep Learning Foundation and SDC Basics
2. The Foundation of Self-Driving Cars 3. Dive Deep into Deep Neural Networks 4. Implementing a Deep Learning Model Using Keras 5. Section 2: Deep Learning and Computer Vision Techniques for SDC
6. Computer Vision for Self-Driving Cars 7. Finding Road Markings Using OpenCV 8. Improving the Image Classifier with CNN 9. Road Sign Detection Using Deep Learning 10. Section 3: Semantic Segmentation for Self-Driving Cars
11. The Principles and Foundations of Semantic Segmentation 12. Implementing Semantic Segmentation 13. Section 4: Advanced Implementations
14. Behavioral Cloning Using Deep Learning 15. Vehicle Detection Using OpenCV and Deep Learning 16. Next Steps 17. Other Books You May Enjoy

Applying the Hough transform

In Chapter 4, Computer Vision for Self-Driving Cars, we looked at the theory behind the Hough transform. We also saw the differences between points in image space and Hough space, as shown in the following screenshot:

Fig 5.10: Image space to Hough space

Now, we will implement the Hough transform using OpenCV:

  1. Import the required libraries:
In[1]: import cv2
In[2]: import numpy as np
In[3]: import matplotlib.pyplot as plt
  1. Use the canny_edge function to detect of edges in the image:
In[4]: def canny_egde(image):
gray_conversion= cv2.cvtColor(image, cv2.COLOR_RGB2GRAY)
blur_conversion = cv2.GaussianBlur(gray_conversion, (5,5),0)
canny_conversion = cv2.Canny(blur_conversion, 50,150)
return canny_conversion
  1. We will reuse the region-of-interest function from the previous section:
In[5]: def reg_of_interest(image):
image_height = image.shape[0]
polygons = np.array([[(200, image_height), (1100, image_height...
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