OpenCV is a huge open-source library for computer vision, machine learning, and image processing. It can process images and videos to identify objects, faces, or even the handwriting of a human. In this article, we will see how to convert a colored video to a gray-scale format.
Approach:
- Import the cv2 module.
- Read the video file to be converted using the cv2.VideoCapture() method.
- Run an infinite loop.
- Inside the loop extract the frames of the video using the read() method.
- Pass the frame to the cv2.cvtColor() method with cv2.COLOR_BGR2GRAY as a parameter to convert it into gray-scale.
- Display the frame using the cv2.imshow() method.
Example: Suppose we have the video file CountdownTimer.mov as the input.
Python3
# importing the module import cv2 # reading the video source = cv2.VideoCapture( 'Countdown Timer.mov' ) # running the loop while True : # extracting the frames ret, img = source.read() # converting to gray-scale gray = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY) # displaying the video cv2.imshow( "Live" , gray) # exiting the loop key = cv2.waitKey( 1 ) if key = = ord ( "q" ): break # closing the window cv2.destroyAllWindows() source.release() |
Output: