One solution that has worked for me is using the Integer Wavelet Transform, which some also refer to as a lifting scheme. For the Haar wavelet, I've seen it defined as:
s = floor((A + B) / 2)
d = A - B
And for inverse:
A = s + floor((d + 1) / 2)
B = s - floor(d / 2)
All the values throughout the whole process are integers. The reason it works is because the formulas contain information about both the even and odd parts of the pixels/coefficients, so there is no loss of information from rounding down. Even if one modifies the coefficients and then takes the inverse transform, the reconstructed pixels will still be integers.
Example implementation in Python:
import numpy as np
def _iwt(array):
output = np.zeros_like(array)
nx, ny = array.shape
x = nx // 2
for j in xrange(ny):
output[0:x,j] = (array[0::2,j] + array[1::2,j])//2
output[x:nx,j] = array[0::2,j] - array[1::2,j]
return output
def _iiwt(array):
output = np.zeros_like(array)
nx, ny = array.shape
x = nx // 2
for j in xrange(ny):
output[0::2,j] = array[0:x,j] + (array[x:nx,j] + 1)//2
output[1::2,j] = output[0::2,j] - array[x:nx,j]
return output
def iwt2(array):
return _iwt(_iwt(array.astype(int)).T).T
def iiwt2(array):
return _iiwt(_iiwt(array.astype(int).T).T)
Some languages already have built-in functions for this purpose. For example, Matlab uses lwt2()
and ilwt2()
for 2D lifting-scheme wavelet transform.
els = {'p',[-0.125 0.125],0};
lshaarInt = liftwave('haar','int2int');
lsnewInt = addlift(lshaarInt,els);
[cAint,cHint,cVint,cDint] = lwt2(x,lsnewInt) % x is your image
xRecInt = ilwt2(cAint,cHint,cVint,cDint,lsnewInt);
An article example where IWT was used for image steganography is Raja, K.B. et. al (2008) Robust image adaptive steganography using integer wavelets.