2

I implemented an algorithm that detects faces and I want to blur faces. I'm using PIL for blurring it.

image = Image.open(path_img)
draw = ImageDraw.Draw(image)
draw.ellipse((top, left, bottom, right), fill = 'white', outline ='white')

I got this with my code

Face to blur

I would like to use :

blurred_image = cropped_image.filter(ImageFilter.GaussianBlur(radius=10 ))

But I can't use it because I'm using an ImageDraw and it works only with Image class. How can I blur with an ellipse (circular) the face?

Thank you

3
  • Do you want to blur the face, or blur the ellipse now covering the face?
    – AKX
    Apr 11 '19 at 9:55
  • Both are good for me but I think that blur the ellipse is the best way
    – GDemay
    Apr 11 '19 at 9:57
  • You should consider accepting the answer you prefer by clicking the hollow tick (check-mark) beside the vote counts so it turns green and the author is rewarded with points and future readers know what you consider to be the solution to your question. Up voting useful answers also encourages people to reply to your questions and costs you nothing. Thank you. Apr 19 '19 at 22:00
2

blur the ellipse is the best way

With Pillow, the best way to do this is to use the blurred ellipse as a blending mask for composite.

from PIL import Image, ImageDraw, ImageFilter


def make_ellipse_mask(size, x0, y0, x1, y1, blur_radius):
    img = Image.new("L", size, color=0)
    draw = ImageDraw.Draw(img)
    draw.ellipse((x0, y0, x1, y1), fill=255)
    return img.filter(ImageFilter.GaussianBlur(radius=blur_radius))


kitten_image = Image.open("kitten.jpg")
overlay_image = Image.new("RGB", kitten_image.size, color="orange")  # This could be a bitmap fill too, but let's just make it orange
mask_image = make_ellipse_mask(kitten_image.size, 150, 70, 350, 250, 5)
masked_image = Image.composite(overlay_image, kitten_image, mask_image)
masked_image.show()

Given this adorable kitten as input, the output is

a censored kitten


EDIT: Inspired by Mark Setchell's answer, simply changing the overlay_image line to

overlay_image = kitten_image.filter(ImageFilter.GaussianBlur(radius=15))

gives us this blur variant (with smooth edges for the blur :) )

enter image description here


0
1

Not sure if you want to composite something over the image to conceal the contents, or blur it. This is more blurry :-)

Starting with Paddington:

enter image description here

You can go to "Stealth Mode" like this:

#!/usr/bin/env python3

from PIL import Image, ImageDraw, ImageFilter
import numpy as np

# Open image
im = Image.open('paddington.png')

# Make a mask the same size as the image filled with black
mask = Image.new('RGB',im.size)

# Draw a filled white circle onto the black mask
draw = ImageDraw.Draw(mask)
draw.ellipse([90,40,300,250],fill=(255,255,255))

# Blur the entire image
blurred = im.filter(ImageFilter.GaussianBlur(radius=15))

# Select either the original or the blurred image at each pixel, depending on the mask
res = np.where(np.array(mask)>0,np.array(blurred),np.array(im)) 

# Convert back to PIL Image and save
Image.fromarray(res).save('result.png')

enter image description here


Or, as suggested by @AKX, you can remove the Numpy dependency and make the code a bit smaller too yet still get same result:

#!/usr/bin/env python3

from PIL import Image, ImageDraw, ImageFilter
import numpy as np

# Open image
im = Image.open('paddington.png')

# Make a mask the same size as the image filled with black
mask = Image.new('L',im.size)

# Draw a filled white circle onto the black mask
draw = ImageDraw.Draw(mask)
draw.ellipse([90,40,300,250],fill=255)

# Blur the entire image
blurred = im.filter(ImageFilter.GaussianBlur(radius=15))

# Composite blurred image over sharp one within mask
res = Image.composite(blurred, im, mask)

# Save
res.save('result.png')
3
  • Using Image.composite would forego the numpy dependency. :)
    – AKX
    Apr 11 '19 at 10:41
  • @AKX I have never had problems with requiring Numpy as it is pretty ubiquitous, but I shall have a try and see if I can do it the way you suggest. Thank you. Apr 11 '19 at 10:45
  • Thank you! It solves my problem, you are awesome :)
    – GDemay
    Apr 11 '19 at 11:48

Your Answer

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

Not the answer you're looking for? Browse other questions tagged or ask your own question.