# how does ImageFilter in PIL normalize the pixel values between 0 and 255 after filtering with Kernel or mask

how does ImageFilter in PIL normalize the pixel values(not the kernel) between 0 and 255 after filtering with Kernel or mask?(Specially zero-summing kernel like:( -1,-1,-1,0,0,0,1,1,1 ))

```my code was like:
import Image
import ImageFilter
Horiz = ImageFilter.Kernel((3, 3), (-1,-2,-1,0,0,0,1,2,1), scale=None, offset=0) #sobel mask
im_fltd = myimage.filter(Horiz)
```
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## 2 Answers

The answer is in the documentation for `Kernel`:

If the scale argument is given, the result of applying the kernel to each pixel is divided by the scale value. The default is the sum of the kernel weights.

Edit: I did a little experimenting and discovered what happens when the scale is zero, since dividing by zero isn't going to work well. Any resulting value `<= 0` becomes `0` and anything `> 0` becomes 255.

In your case I'd recommend using a scale of `1` and an offset of `128` instead.

P.S. you can verify the calculation of the `scale` parameter by looking at the source:

``````    if scale is None:
# default scale is sum of kernel
scale = reduce(lambda a,b: a+b, kernel)
``````
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the thing about zero-summing kernel is that they have negative values, so they can produce negative value for a pixel,dividing them with scale still produce negative value. Here in my code, even with scale 1 or None and offset=0, PIL is producing image normalized between 0 and 255.So which normalization technique does it use? –  user1756427 Apr 9 at 18:22
@user1756427, I had to do some experimenting - check my edit. –  Mark Ransom Apr 9 at 19:13
yes you are right ,offset 128 helps. I did some experimenting too and and based on observation, I think two things are happening: 1) applying kernel or mask on a pixel and then scale and offset. If the result is negative(< 0), then it is assigned 0, else if it is greater than 255, then it is assigned 255. 2)kernel is applied in reverse i.e (-1,-1,-1,0,0,0,1,1,1) is applied like if it is (1,1,1,0,0,0,-1,-1,-1) –  user1756427 Apr 10 at 7:44
you wrote above that "Any resulting value <= 0 becomes 0 and anything > 0 becomes 255.". This should be "Any resulting value <= 0 becomes 0 and anything > 255 becomes 255.". I edited that but dont know what happened. –  user1756427 Apr 10 at 19:14
@user1756427, my statement is correct - any positive non-zero value (before the division by 0) becomes 255. I think what happens is that it really does do a division and -x/0 become -infinity, 0/0 becomes 0, and x/0 becomes +infinity. Then -infinity gets converted to 0 and +infinity gets converted to 255. –  Mark Ransom Apr 10 at 20:21
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The above answer of Mark states his theory regarding what happens when a Zero-summing kernel is used with scale argument 0 or None or not passed/mentioned. Now talking about how PIL handles calculated pixel values after applying kernel,scale and offset, which are not in [0,255] range. My theory about how it normalizes calculated pixel value is that it simply do: Any resulting value <= 0 becomes 0 and anything > 255 becomes 255.

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That's a perfectly reasonable assumption, it's how most image processing operations handle out-of-range outputs. See codereview.stackexchange.com/questions/6502/… for my own example. There's another approach too, see stackoverflow.com/a/141943/5987 –  Mark Ransom Apr 11 at 19:59
Is clamping so obvious in Image processing that it isnt mentioned anywhere (or rarely) in PIL. Do People assume it by default? –  user1756427 Apr 12 at 14:12
Yes, I think that's true. It's also known as saturating arithmetic. If you've ever seen the visual results of simply truncating out of range values, you'd know why this is standard practice. –  Mark Ransom Apr 12 at 14:34
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