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Im trying to find an efficient way to scale 2 byte (-32K -> +32K) numpy int arrays to 8 bit (0 -> 255) using a specific scaling function. The very inefficient method that works is (where minVal and maxVal are the min and Max values in the original 2 byte numpy array, and paddingVal in the original will be set to 0):

...

pixel_array = np.zeros( length, dtype=np.int16)
byte_array = np.zeros( length, dtype=np.uint8)

....

i = 0
for val in np.nditer(pixel_array):
    value = 0.0
    if val == paddingVal:
        byte_array[i] = 0
    else:
        value = 255.0 * ( val - minVal ) / (maxVal - minVal - 1.0)    
        byte_array[i] = (round(value))
    i += 1  

I cant figure out how to avoid the loop and still do the if... and apply the scaling function.

thx

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3  
Just FYI: There's absolutely no need for the loop. If you're not tightly memory constrained, just do byte_array = (255.0 * (pixel_array - minVal) / (maxVal - minVal - 1.0)).astype(np.uint8). You can set the "padding" values afterwards using byte_array[pixel_array == paddingVal] = 0. It's not memory-efficient, but it will be much faster than what you're currently doing. –  Joe Kington Jun 18 '13 at 17:28
    
well that is certainly faster. Lovely how compact python can make it. –  thefog Jun 18 '13 at 17:53
1  
Just so you're fore-warned, the version I posted in my comment implicitly takes the floor of the values instead of rounding. If you're fine with that, it's a bit faster than calling numpy.round, but it's not the same as your original code (@jorgeca's answer should give identical results to your original solution, though). –  Joe Kington Jun 18 '13 at 17:58

2 Answers 2

up vote 2 down vote accepted

You can use a mask to benefit from numpy's vectorization (implicit loops), which will be much faster:

mask = pixel_array == paddingVal
byte_array[mask] = 0
byte_array[~mask] = np.round(255.0 * (pixel_array[~mask] - minVal) / (maxVal - minVal - 1.0))

It could also be done like this, which is cleaner because you avoid having to create byte_array beforehand:

byte_array = np.round(255.0 * (pixel_array - minVal) / (maxVal - minVal - 1.0)).astype(np.uint8)
byte_array[pixel_array == paddingVal] = 0

Edit: as Joe Kington points in a comment to the question, this trades of memory for speed.

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That fails with an error, I tried something like before and get: byte_array[~mask] = round(255.0 * (pixel_array[~mask] - minVal) / (maxVal - minVal - 1.0)) TypeError: only length-1 arrays can be converted to Python scalars –  thefog Jun 18 '13 at 17:39
    
Sorry, round is a python built in that only works for scalars. I'll fix that. –  jorgeca Jun 18 '13 at 17:42

Try:

byte_array[i] = (((val << 16) >> 8) & 0xFF0000) >> 16

It assumes val is 32 bit integer between 0 and 65535

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val in this case is a negative signed 16 bit int, so the above wont solve the problem. In any case, the performance isn't radically different from the original. Somehow, have to get rid of the explicit loop, I think. –  thefog Jun 18 '13 at 17:19
    
@thefog you can convert a 32 bit integer that is between -32768 and 32767 to a 32 bit integer that will be between 0 and 65535 with (int + 0x10000) & 0xFFFEFFFF. This would mean that after scaling -1 (because it's full on bits in 2's complement) becomes 255 and so on. –  Esailija Jun 18 '13 at 17:23
    
@thefog Well it avoids floating point operations, multiplication and a call to round. I guess the code doesn't run too close to hardware if it performs the same :P –  Esailija Jun 18 '13 at 17:33

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