Remove background of the image using opencv Python

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无人及你
无人及你 2020-12-13 07:09

I have two images, one with only background and the other with background + detectable object (in my case its a car). Below are the images

I am trying to re

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  • 2020-12-13 07:40

    I recommend using OpenCV's grabcut algorithm. You first draw a few lines on the foreground and background, and keep doing this until your foreground is sufficiently separated from the background. It is covered here: https://docs.opencv.org/trunk/d8/d83/tutorial_py_grabcut.html as well as in this video: https://www.youtube.com/watch?v=kAwxLTDDAwU

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  • 2020-12-13 07:41

    The problem is that you're subtracting arrays of unsigned 8 bit integers. This operation can overflow.

    To demonstrate

    >>> import numpy as np
    >>> a = np.array([[10,10]],dtype=np.uint8)
    >>> b = np.array([[11,11]],dtype=np.uint8)
    >>> a - b
    array([[255, 255]], dtype=uint8)
    

    Since you're using OpenCV, the simplest way to achieve your goal is to use cv2.absdiff().

    >>> cv2.absdiff(a,b)
    array([[1, 1]], dtype=uint8)
    
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  • 2020-12-13 07:43

    I solved your problem using the OpenCV's watershed algorithm. You can find the theory and examples of watershed here.

    First I selected several points (markers) to dictate where is the object I want to keep, and where is the background. This step is manual, and can vary a lot from image to image. Also, it requires some repetition until you get the desired result. I suggest using a tool to get the pixel coordinates. Then I created an empty integer array of zeros, with the size of the car image. And then I assigned some values (1:background, [255,192,128,64]:car_parts) to pixels at marker positions.

    NOTE: When I downloaded your image I had to crop it to get the one with the car. After cropping, the image has size of 400x601. This may not be what the size of the image you have, so the markers will be off.

    Afterwards I used the watershed algorithm. The 1st input is your image and 2nd input is the marker image (zero everywhere except at marker positions). The result is shown in the image below.

    I set all pixels with value greater than 1 to 255 (the car), and the rest (background) to zero. Then I dilated the obtained image with a 3x3 kernel to avoid losing information on the outline of the car. Finally, I used the dilated image as a mask for the original image, using the cv2.bitwise_and() function, and the result lies in the following image:

    Here is my code:

    import cv2
    import numpy as np
    import matplotlib.pyplot as plt
    
    # Load the image
    img = cv2.imread("/path/to/image.png", 3)
    
    # Create a blank image of zeros (same dimension as img)
    # It should be grayscale (1 color channel)
    marker = np.zeros_like(img[:,:,0]).astype(np.int32)
    
    # This step is manual. The goal is to find the points
    # which create the result we want. I suggest using a
    # tool to get the pixel coordinates.
    
    # Dictate the background and set the markers to 1
    marker[204][95] = 1
    marker[240][137] = 1
    marker[245][444] = 1
    marker[260][427] = 1
    marker[257][378] = 1
    marker[217][466] = 1
    
    # Dictate the area of interest
    # I used different values for each part of the car (for visibility)
    marker[235][370] = 255    # car body
    marker[135][294] = 64     # rooftop
    marker[190][454] = 64     # rear light
    marker[167][458] = 64     # rear wing
    marker[205][103] = 128    # front bumper
    
    # rear bumper
    marker[225][456] = 128
    marker[224][461] = 128
    marker[216][461] = 128
    
    # front wheel
    marker[225][189] = 192
    marker[240][147] = 192
    
    # rear wheel
    marker[258][409] = 192
    marker[257][391] = 192
    marker[254][421] = 192
    
    # Now we have set the markers, we use the watershed
    # algorithm to generate a marked image
    marked = cv2.watershed(img, marker)
    
    # Plot this one. If it does what we want, proceed;
    # otherwise edit your markers and repeat
    plt.imshow(marked, cmap='gray')
    plt.show()
    
    # Make the background black, and what we want to keep white
    marked[marked == 1] = 0
    marked[marked > 1] = 255
    
    # Use a kernel to dilate the image, to not lose any detail on the outline
    # I used a kernel of 3x3 pixels
    kernel = np.ones((3,3),np.uint8)
    dilation = cv2.dilate(marked.astype(np.float32), kernel, iterations = 1)
    
    # Plot again to check whether the dilation is according to our needs
    # If not, repeat by using a smaller/bigger kernel, or more/less iterations
    plt.imshow(dilation, cmap='gray')
    plt.show()
    
    # Now apply the mask we created on the initial image
    final_img = cv2.bitwise_and(img, img, mask=dilation.astype(np.uint8))
    
    # cv2.imread reads the image as BGR, but matplotlib uses RGB
    # BGR to RGB so we can plot the image with accurate colors
    b, g, r = cv2.split(final_img)
    final_img = cv2.merge([r, g, b])
    
    # Plot the final result
    plt.imshow(final_img)
    plt.show()
    

    If you have a lot of images you will probably need to create a tool to annotate the markers graphically, or even an algorithm to find markers automatically.

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