# optimize python nested loops for YUV2RGB conversion

We just derived the YUV2RGB algorithm from Hikvision. However for our 720H x 1280W screen resolution python conversion it takes too long (15 seconds) for 720x1280=921,600 rounds of calculations for 1 single RGB frame. Any one knows how to optimized the following 2 large nested loop? The YUV2RGB algorithm is:

def YUV2RGB (Y1, U1, V1, dwHeight, dwWidth): # function call

``````RGB1 = np.zeros(dwHeight * dwWidth * 3, dtype=np.uint8)  # create 1 dimensional empty np array with 720x1280x3

for i in range (0, dwHeight):    #0-720
for j in range (0, dwWidth): #0-1280

# print "cv"

Y = Y1[i * dwWidth + j];
U = U1[(i / 2) * (dwWidth / 2) + (j / 2)];
V = V1[(i / 2) * (dwWidth / 2) + (j / 2)];

R = Y + (U - 128) + (((U - 128) * 103) >> 8);
G = Y - (((V - 128) * 88) >> 8) - (((U - 128) * 183) >> 8);
B = Y + (V - 128) + (((V - 128) * 198) >> 8);

R = max(0, min(255, R));
G = max(0, min(255, G));
B = max(0, min(255, B));

RGB1[3 * (i * dwWidth + j)] = B;
RGB1[3 * (i * dwWidth + j) + 1] = G;
RGB1[3 * (i * dwWidth + j) + 2] = R;

RGB = np.reshape(RGB1, (dwHeight, dwWidth, 3))

print ("rgb.shape:")
print RGB.shape

return RGB
``````

"for i in range (0, dwHeight): #0-720 for j in range (0, dwWidth): #0-1280 "

is too large. Any way to optimize this. Thanks.

Matthew

-
May not be what you're looking for -- there are probably ways to obfuscate the algorithm to please numpy -- but I can imagine that just running this code on PyPy is maybe 50 times faster than CPython. –  Armin Rigo Apr 25 '13 at 10:02
actually vectorized numpy operations may even simplify the code but you could use Cython or Numba to keep the code almost the same. –  J.F. Sebastian Apr 25 '13 at 14:46