I want to use `unsharp mask` on a 16 Bit Image.

The Image has `640 x 480 Pixels` and is saved in a NumPy array.

I have done the following:

• blurred the image with a `Gaussian filter` (three different methods)
• then, created a mask by subtracting the blur Image form the original
• finally, added the mask multiplied by `WightFaktor` to the original Image

But it doesn´t really work.

Here is the Python code:

``````Gaussian1 = ndimage.filters.gaussian_filter(Image,sigma=10.0)
Gaussian2 = filters.gaussian_filter(Image,sigma=10.0)
Gaussian3 = cv2.GaussianBlur(Image,(9,9),sigmaX=10.0)

``````

To get an unsharp image using `OpenCV` you need to use the addWeighted function as follows:

``````import cv2

gaussian_3 = cv2.GaussianBlur(image, (0, 0), 2.0)
unsharp_image = cv2.addWeighted(image, 2.0, gaussian_3, -1.0, 0)
cv2.imwrite("example_unsharp.jpg", unsharp_image)
``````

Giving the following kind of result:

`addWeighted()` is used here as follows:

``````dst = cv2.addWeighted(src1, alpha, src2, beta, gamma)
``````

Giving you the following transformation:

``````dst = src1*alpha + src2*beta + gamma
``````

The strength of the effect can be altered by adjusting the `alpha` and `beta` weightings, for example: `1.5` and `-0.5`.

• That is not a Gaussian filter, that's close to a uniform filter. See this old blog post of mine for an explanation. Instead, use `cv2.GaussianBlur(image, (0,0), 10.0)` to let OpenCV compute the proper size of the kernel. But a sigma of 10 is way too large for this purpose, try 1 or 2 instead. Commented Sep 17, 2020 at 15:39
• There are good arguments link that suggest the mandrill, peppers might be more encouraging of diversity and respect. Commented Nov 12, 2021 at 18:20

One could use `scikit-image` or `PIL`'s `unsharp mask` implementation as well:

``````import numpy as np
import matplotlib.pylab as plt
from PIL import Image, ImageFilter
# with scikit-image
im1 = np.copy(im).astype(np.float)
for i in range(3):
# with PIL
im = Image.open('images/lena.jpg')
# plot
plt.figure(figsize=(20,7))
plt.subplot(131), plt.imshow(im), plt.axis('off'), plt.title('Original', size=20)
plt.subplot(132), plt.imshow(im1), plt.axis('off'), plt.title('Sharpened (skimage)', size=20)
plt.subplot(133), plt.imshow(im2), plt.axis('off'), plt.title('Sharpened (PIL)', size=20)
plt.show()
``````

with the following output:

Also, adding some detailed stpes / comments on Martin Evans code with `opencv-python`:

``````import cv2