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import torch | |
import torch.fft as fft | |
import math | |
def freq_mix_3d(x, noise, LPF): | |
""" | |
Noise reinitialization. | |
Args: | |
x: diffused latent | |
noise: randomly sampled noise | |
LPF: low pass filter | |
""" | |
# FFT | |
x_freq = fft.fftn(x, dim=(-3, -2, -1)) | |
x_freq = fft.fftshift(x_freq, dim=(-3, -2, -1)) | |
noise_freq = fft.fftn(noise, dim=(-3, -2, -1)) | |
noise_freq = fft.fftshift(noise_freq, dim=(-3, -2, -1)) | |
# frequency mix | |
HPF = 1 - LPF | |
x_freq_low = x_freq * LPF | |
noise_freq_high = noise_freq * HPF | |
x_freq_mixed = x_freq_low + noise_freq_high # mix in freq domain | |
# IFFT | |
x_freq_mixed = fft.ifftshift(x_freq_mixed, dim=(-3, -2, -1)) | |
x_mixed = fft.ifftn(x_freq_mixed, dim=(-3, -2, -1)).real | |
return x_mixed | |
def get_freq_filter(shape, device, filter_type, n, d_s, d_t): | |
""" | |
Form the frequency filter for noise reinitialization. | |
Args: | |
shape: shape of latent (B, C, T, H, W) | |
filter_type: type of the freq filter | |
n: (only for butterworth) order of the filter, larger n ~ ideal, smaller n ~ gaussian | |
d_s: normalized stop frequency for spatial dimensions (0.0-1.0) | |
d_t: normalized stop frequency for temporal dimension (0.0-1.0) | |
""" | |
if filter_type == "gaussian": | |
return gaussian_low_pass_filter(shape=shape, d_s=d_s, d_t=d_t).to(device) | |
elif filter_type == "ideal": | |
return ideal_low_pass_filter(shape=shape, d_s=d_s, d_t=d_t).to(device) | |
elif filter_type == "box": | |
return box_low_pass_filter(shape=shape, d_s=d_s, d_t=d_t).to(device) | |
elif filter_type == "butterworth": | |
return butterworth_low_pass_filter(shape=shape, n=n, d_s=d_s, d_t=d_t).to(device) | |
else: | |
raise NotImplementedError | |
def gaussian_low_pass_filter(shape, d_s=0.25, d_t=0.25): | |
""" | |
Compute the gaussian low pass filter mask. | |
Args: | |
shape: shape of the filter (volume) | |
d_s: normalized stop frequency for spatial dimensions (0.0-1.0) | |
d_t: normalized stop frequency for temporal dimension (0.0-1.0) | |
""" | |
T, H, W = shape[-3], shape[-2], shape[-1] | |
mask = torch.zeros(shape) | |
if d_s==0 or d_t==0: | |
return mask | |
for t in range(T): | |
for h in range(H): | |
for w in range(W): | |
d_square = (((d_s/d_t)*(2*t/T-1))**2 + (2*h/H-1)**2 + (2*w/W-1)**2) | |
mask[..., t,h,w] = math.exp(-1/(2*d_s**2) * d_square) | |
return mask | |
def butterworth_low_pass_filter(shape, n=4, d_s=0.25, d_t=0.25): | |
""" | |
Compute the butterworth low pass filter mask. | |
Args: | |
shape: shape of the filter (volume) | |
n: order of the filter, larger n ~ ideal, smaller n ~ gaussian | |
d_s: normalized stop frequency for spatial dimensions (0.0-1.0) | |
d_t: normalized stop frequency for temporal dimension (0.0-1.0) | |
""" | |
T, H, W = shape[-3], shape[-2], shape[-1] | |
mask = torch.zeros(shape) | |
if d_s==0 or d_t==0: | |
return mask | |
for t in range(T): | |
for h in range(H): | |
for w in range(W): | |
d_square = (((d_s/d_t)*(2*t/T-1))**2 + (2*h/H-1)**2 + (2*w/W-1)**2) | |
mask[..., t,h,w] = 1 / (1 + (d_square / d_s**2)**n) | |
return mask | |
def ideal_low_pass_filter(shape, d_s=0.25, d_t=0.25): | |
""" | |
Compute the ideal low pass filter mask. | |
Args: | |
shape: shape of the filter (volume) | |
d_s: normalized stop frequency for spatial dimensions (0.0-1.0) | |
d_t: normalized stop frequency for temporal dimension (0.0-1.0) | |
""" | |
T, H, W = shape[-3], shape[-2], shape[-1] | |
mask = torch.zeros(shape) | |
if d_s==0 or d_t==0: | |
return mask | |
for t in range(T): | |
for h in range(H): | |
for w in range(W): | |
d_square = (((d_s/d_t)*(2*t/T-1))**2 + (2*h/H-1)**2 + (2*w/W-1)**2) | |
mask[..., t,h,w] = 1 if d_square <= d_s*2 else 0 | |
return mask | |
def box_low_pass_filter(shape, d_s=0.25, d_t=0.25): | |
""" | |
Compute the ideal low pass filter mask (approximated version). | |
Args: | |
shape: shape of the filter (volume) | |
d_s: normalized stop frequency for spatial dimensions (0.0-1.0) | |
d_t: normalized stop frequency for temporal dimension (0.0-1.0) | |
""" | |
T, H, W = shape[-3], shape[-2], shape[-1] | |
mask = torch.zeros(shape) | |
if d_s==0 or d_t==0: | |
return mask | |
threshold_s = round(int(H // 2) * d_s) | |
threshold_t = round(T // 2 * d_t) | |
cframe, crow, ccol = T // 2, H // 2, W //2 | |
mask[..., cframe - threshold_t:cframe + threshold_t, crow - threshold_s:crow + threshold_s, ccol - threshold_s:ccol + threshold_s] = 1.0 | |
return mask | |