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I have an opencv Mat, how can I apply sin() to all of its elements? Is it necessary to use a loop to get each element and calculate the sin one by one? Regards.

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1 Answer 1

up vote 2 down vote accepted

I'm using python and using numpy so can do:

>>> import cv
>>> import numpy as np
>>> im = cv.LoadImageM("aaa.jpg")
>>> np.sin(im)
array([[[ 0.36319944,  0.46771851,  0.99646664],
        [ 0.98024565, -0.49104786,  0.46771851],
        [ 0.69605851, -0.9983471 , -0.49104786],
        ..., 
        [-0.58777064, -0.79041475,  0.60906792],
        [-0.79041475, -0.94252455,  0.36319944],
        [ 0.08839871, -0.58777064, -0.94252455]],
  etc...

Otherwise, it should be easy to adapt the below python code to create and use a look up table, cv.LUT:

import cv
import math

im = cv.LoadImageM("aaa.jpg")
dst = cv.CreateMat(im.height,im.width, cv.CV_32FC3)
lut_sin = cv.CreateMat(256, 1, cv.CV_32FC3)    

for i in xrange(256):     
    s = math.sin(i)
    cv.Set1D(lut_sin, i, (s,s,s,s))

cv.LUT(im,dst,lut_sin)

print cv.Get2D(dst,0,0)
#output, matches above:
(0.36319944262504578, 0.46771851181983948, 0.99646663665771484, 0.0)

For floating point data, you can use cv.PolarToCart:

>>> import cv
>>> im = cv.LoadImageM("aaa.jpg")
>>> im2 = cv.CreateMat(im.height, im.width, cv.CV_32FC3)
>>> cv.Convert(im,im2)
>>> sin_of_angle = cv.CreateMat(im.height, im.width, cv.CV_32FC3)
>>> cv.PolarToCart(None,im2,None,sin_of_angle,0)
>>> cv.Get1D(sin_of_angle,0)
(0.36319947242736816, 0.46771851181983948, 0.99646669626235962, 0.0)
>>> cv.Get1D(sin_of_angle,1)
(0.98024564981460571, -0.49104788899421692, 0.46771851181983948, 0.0)

You can use this to easily get the cos values as well. You can switch the last parameter to True for Radians.

share|improve this answer
    
But if you don't have numpy, then you have to loop over all the elements. –  Martin Beckett May 3 '12 at 16:21
    
@Martin Beckett - Perhaps that is a bit python-centric, I've added a LUT approach which should be quick. –  fraxel May 3 '12 at 17:46
    
excellent answer, LUT is a very good approach (assuming an 8bit image) –  Martin Beckett May 3 '12 at 17:53
    
But my Mat contains dot products(CV_32F) of SIFT features instead of pixel values. –  beaver May 4 '12 at 4:24
1  
@beaver - PolarToCart will fix that for you :) –  fraxel May 4 '12 at 9:16
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