I am doing an assignment that asked me the following:

Take a (blurry) image with your phone (or a camera) and transfer it to your computer. Perform some basic image analysis steps to enhance the image:

a) Histogram equalization (with comments and plots)

b) De-blurring (de-noising) of the image by application of a suitable filter (either on space/frequency filed) and experiment with different choices and provide comments.

c) Edge detection using one (or more) technique.

I managed to complete all three tasks (for c I used Canny edge detection). My problem is that the deblurring part of the task doesn't produce an image 'nice' enough to feed in the edge detection:

This the code:

# Task a
equ = cv2.equalizeHist(gray) 

# Task b (attempt #1)
kernel = np.array([[-1,-1,-1], [-1,50,-1], [-1,-1,-1]])
im = cv2.filter2D(equ, -1, kernel)

# Task b (attempt #2)
psf = np.ones((5, 5)) / 25
equ = convolve2d(equ, psf, 'same')
im, _ = restoration.unsupervised_wiener(equ, psf)

# Task c
equCopy = np.uint8(im)
edges = cv2.Canny(equCopy,300,500)

This is the equalized image:

enter image description here

These are the outputs:

Part B:

Attempt #1:

enter image description here

Attempt #2 (taken from here) (don't get why it outputs like this though):

enter image description here

Part C:

enter image description here

Is this the best I can get from such a blurred image or are there other ways? Could anyone help me fix my second attempt to part b?

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.