Exemple #1
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 def forward(ctx, input, filter_height, filter_width): 
     ctx.save_for_backward(input) 
     y_spectral = fft.fft2(input) 
     y_spectral = _crop_spectrum(y_spectral) 
     y_spectral = _treat_corner_cases(y_spectral) 
     cropped = fft.ifft2(y_spectral) 
     return cropped.float()
 def forward(self, k_re, k_im):
     k_re, k_im = make_contiguous(k_re, k_im)
     x_r, x_i = ifft2(k_re, k_im)
     if self.norm == 'ortho':
         N = np.sqrt(x_r.size(-1) * x_r.size(-2))
         x_r *= N
         x_i *= N
     return x_r, x_i
    def backward(self, grad_output_re, grad_output_im):
        grad_output_re, grad_output_im = make_contiguous(
            grad_output_re, grad_output_im)
        gi, gr = ifft2(grad_output_im, grad_output_re)
        if self.norm == 'ortho':
            N = np.sqrt(gi.size(-1) * gi.size(-2))
            gi *= N
            gr *= N

        return gr, gi
Exemple #4
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def run_fft(x, z):
    if torch.cuda.is_available():
        y1, y2 = cfft.fft2(x, z)
        x_np = x.cpu().numpy().squeeze()
        y_np = nfft.fft2(x_np)
        assert np.allclose(y1.cpu().numpy(), y_np.real)
        assert np.allclose(y2.cpu().numpy(), y_np.imag)

        # assert np.allclose(y1[1,0].cpu().numpy(), nfft.fft2(x_np[1,0]).real)

        x0, z0 = cfft.ifft2(y1, y2)
        x0_np = nfft.ifft2(y_np)
        assert np.allclose(x0.cpu().numpy(), x0_np.real)
        assert np.allclose(z0.cpu().numpy(), x0_np.imag)

    else:
        print("Cuda not available, cannot test.")
Exemple #5
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import numpy as np
import torch
import pytorch_fft.fft as fft

from PIL import Image

im = np.array(Image.open('rome.jpg').convert('LA'), dtype=np.uint8)
#  Image.fromarray(im, mode='LA').save('newrome.png')

print('min: {}, max: {}'.format(np.min(im), np.max(im)))

im = torch.from_numpy(im).float().cuda()
im = im.permute(2, 0, 1).contiguous()
print(im.type())
print(im.size())

B_real, B_imag = fft.fft2(im, torch.zeros(*im.size()).cuda())
im, _ = fft.ifft2(B_real, torch.zeros(*im.size()).cuda())

im = im.permute(1, 2, 0).contiguous()
im = im.byte().cpu().numpy()
Image.fromarray(im, mode='LA').save('newrometorched.png')

print('min: {}, max: {}'.format(np.min(im), np.max(im)))
Exemple #6
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import torch
import pytorch_fft.fft as fft
import numpy as np

from PIL import Image

imreal = torch.from_numpy(np.array(Image.open('rome.png').convert('LA'))).cuda()
Image.fromarray(imreal.cpu().numpy(), mode='LA').save('preimg.png')
imreal = imreal.unsqueeze(0).float()
imimag = torch.zeros(*imreal.size()).cuda()


fft_version = fft.fft2(imreal, imimag)[0]
newimreal, newimimag = fft.ifft2(fft_version, torch.zeros(*fft_version.size()).cuda())

def pre(im):
    #  im = im.abs().log()
    #  mini = torch.min(im)
    #  maxi = torch.max(im)
    #  im = 255 * (im - mini) / (maxi - mini)
    #  print(im.min())
    #  print(im.max())
    return im.byte()

real_img = pre(newimreal).cpu().numpy()
imag_img = pre(newimimag).cpu().numpy()

#  np.save('real_img.npy', real_img)
Image.fromarray(real_img.squeeze(), mode='LA').save('real_img.png')
#  Image.fromarray(imag_img.squeeze(), mode='LA').save('real_img.png')