# Python array subtraction loops back to high number instead of giving negative value

Here is my code: I'm using numpy and opencv

``````q = np.array(image)
q = q.reshape(-1, q.shape[2])
r = np.subtract(q,p)
print r
``````

Basically what happens is if the value in my q array is greater than p the subtraction loops back up to 256 and subtracts whats left from there. I'd rather get a value of 0 if the subtraction goes negative. Does anybody know a good way to do this?

• Your question is unclear? what you want to do exactly? Commented Apr 18, 2015 at 19:53
• what is `p`? What do you mean with "loops back"? that something like `0-1 = 256` happens? Commented Apr 18, 2015 at 19:53
• I just don't understand why the subtraction doesn't work, I think that yes that that sort of loop back is happening, but I'm not sure. p is the same as q just pulls the image from a different file Commented Apr 18, 2015 at 19:55
• i'm not getting an overflow error, i still get values, but maybe. This is my first image processing project so I'm new to it Commented Apr 18, 2015 at 19:59
• Okay after checking: Lets say my q is [x, 189, z] Lets say my p is [m, 222, n] My r becomes [x-m, 223, z-n] 223 is 256-33 Commented Apr 18, 2015 at 20:01

You could change to int16 which supports negative integers and set neg values to 0, your values are wrapping because you have `uint8's`:

``````arr1 = np.array([100, 200, 255],dtype=np.int16)
arr2 = np.array([180, 210, 100],dtype=np.int16)

sub_arr = np.subtract(arr1, arr2)
sub_arr[sub_arr < 0] = 0
print(sub_arr)
[  0   0 155]
``````

To change you array you can use `array.astype(np.int16)` to change from `uint8` to `np.int16` and use the same to change back again after subtracting.

``````arr1 = np.array([100, 200, 255],dtype=np.uint8)
arr2 = np.array([180, 210, 100],dtype=np.uint8)
_arr2 = arr2.astype(np.int16)
sub_arr = np.subtract(arr1, _arr2)

sub_arr[sub_arr < 0] = 0
sub_arr = sub_arr.astype(np.uint8)
print(sub_arr)
``````

Or also use np.clip:

``````arr1 = np.array([100, 200, 255],dtype=np.uint8)
arr2 = np.array([180, 210, 100],dtype=np.uint8)

sub_arr = np.subtract(arr1, arr2.astype(np.int16)).clip(0, 255).astype(np.uint8)
print(sub_arr)
[  0   0 155]
``````
• So you are sure there is no saturated subtraction available in numpy? Hmm.. surprrises me, as that is quite common and worth an optimized implementation. Commented Apr 18, 2015 at 20:11
• @skrhee, no worries, I am far from a numpy expert so there may be a nicer way but this is as good as it gets for me ;) Commented Apr 18, 2015 at 22:04
• @PadraicCunningham thats as good as I need it! Have a great weekend Commented Apr 18, 2015 at 22:06
• @skrhee, you too, glad it helped, Commented Apr 18, 2015 at 22:10
• do you mean `string or a number`? Commented Apr 25, 2015 at 20:42

You should add tag image processing. That gave the idea. I think, the problem is that if you have something like 10-11 you get a value of 255, but would prefer to stick at 0, right?

That is called wrapping (strictly: modulo arithmetics, which is normal for fixed-size integer variables) and also applies to addition (255+1 wraps to 0).

What you want is called saturation arithmetics. This will avoid wrap-around by saturating the result to the minimum and maximum. Now, as I do not know numpy, I cannot tell you, if there is a saturated subtraction available, but that should be easy to find out for you.

Hope that my guess was right; your question leaves a lot of space for interpretation.

Given 2 arrays p and q of bytes, I've sucessfully computed the difference using numpy with the following line of code.

``````r = (p>q)*(p-q)+(p<q)*(q-p)
``````