OpenCV4

From ESE205 Wiki
Jump to navigation Jump to search

Overview

This is a tutorial on how to install OpenCV4 and use camera module.

Materials/Prerequisites

  • Raspberry Pi
  • Raspberry Pi Camera

Process

Install OpenCV

Follow these instruction[1] to install OpenCV onto your Raspberry Pi using the terminal.

  • Important note: don't do make-j4. It may freeze so it best to just do make or make-j1.


After you have successfully installed OpenCV, you will be able to use import cv2. If you do it on the terminal, you want to put in these code source ~/.profile and then workon cv.

Capturing image

Following these step to set up your camera[2]

  • Note: Ignoring GoPiGo installation.


Once the camera is set up, it is ready to take pictures. In order to capture image, follow these instruction [3]

Taking picture code


Note:

  • Use sleep (measured in seconds) to create a delay between the preview: time.sleep(seconds)
  • Another way to enable your camera is: go to the terminal → type in sudo raspi-config → select Enable Camera → press Enter → select Finish → reboot and log back on to the Raspberry Pi.

Edge Detector

Once you have a picture, you may want to use edge detection to detect the chessboard region of interest.

Follow these instruction for Canny edge detection[4]

  • Note: Scroll down to the Explanation section.

In order to use build-in function in Open CV: remember to import cv2. In the instruction, the import cv2 ascv means that you can now type in cv instead of cv2 when using build-in function.


Use the following build-in code for Canny Detection:

Canny( detected_edges, detected_edges, lowThreshold, lowThreshold*ratio, kernel_size )

Ex: To load image:

  • src = cv.imread(filename, cv.IMREAD_GRAYSCALE)

Then use:

  • dst = cv.Canny(src, 50, 200, None, 3)

Hougline Transformation

Authors

  • Nhut Dang
  • Robert Goodloe
  • Ethan Shry(TA)

Fall 2018

Group Link

Group page

Group weekly log

References

  1. Open CV instruction:Link
  2. Setting up camera:Link
  3. Capturing Image:Link
  4. Canny edge detection:Link