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pointwise_attack.py
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pointwise_attack.py
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import torch
import numpy as np
from utils_se import l0
import random
# main attack
class PointWiseAtt():
def __init__(self,
model,
flag):
self.model = model
self.flag = flag
def check_adv_status(self,img,olabel,tlabel):
is_adv = False
pred_label = self.model.predict_label(torch.from_numpy(img).cuda())
if self.flag == True:
if pred_label == tlabel:
is_adv = True
else:
if pred_label != olabel:
is_adv = True
return is_adv
def binary_search(self, x, index, adv_value, non_adv_value,shape,olabel,tlabel):
nquery = 0
for i in range(10):
next_value = (adv_value + non_adv_value) / 2
x[index] = next_value
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
if is_adversarial:
adv_value = next_value
else:
non_adv_value = next_value
return adv_value,nquery
def pw_perturb(self,oimg,timg,olabel,tlabel,max_query=1000):
shape = oimg.shape
N = oimg.size
start_qry = 0
end_qry = 0
# flatten an image
original = oimg.copy().reshape(-1)
x = timg.copy().reshape(-1)
nquery = 0
D = np.zeros(max_query+500).astype(int)
d = l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
terminate = False
#while True:
while not terminate:
# draw random shuffling of all indices
indices = list(range(N))
random.shuffle(indices)
for index in indices:
# change index
old_value = x[index]
new_value = original[index]
if old_value == new_value:
continue
x[index] = new_value
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
# if adversarial, restart from there
if is_adversarial:
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d = l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
if nquery%200 == 0:
print('nqry = {}; Reset value to original -> new distance: {}; L0 = {}; pred label: {}' .format(nquery,distance,d,self.model.predict_label(torch.from_numpy(x.reshape(shape)).cuda())))
else:
x[index] = old_value
if nquery>max_query:
terminate = True
break
else:
# no index was succesful
terminate = True
if nquery>max_query:
terminate = True
else:
terminate = False
while not terminate:
# draw random shuffling of all indices
indices = list(range(N))
random.shuffle(indices)
# whether that run through all values made any improvement
improved = False
for index in indices:
# change index
old_value = x[index]
original_value = original[index]
if old_value == original_value:
continue
x[index] = original_value
# check if still adversarial
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
# if adversarial, no binary search needed
if is_adversarial: # pragma: no cover
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
improved = True
else:
adv_value = old_value # x
non_adv_value = original_value # ori
best_adv_value,nqry = self.binary_search(x, index, adv_value, non_adv_value,shape,olabel,tlabel)
nquery += nqry
if old_value != best_adv_value:
x[index] = best_adv_value
improved = True
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
print('nquery = {}; Set value at {} from {} to {}'
' (original has {}) ->'
' new distance: {}; \npred label:{}; L0:{}'.format(nquery,
index, old_value, best_adv_value,
original_value, distance,
self.model.predict_label(torch.from_numpy(x.reshape(shape)).cuda()) ,d))
else:
x[index]=old_value
if nquery > max_query:
terminate = True
break
if not improved:
# no improvement for any of the indices
terminate = True
#break
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
D[end_qry:nquery]=d
return x,nquery, D[:nquery]
def pw_perturb_multiple(self,oimg,timg,olabel,tlabel,npix=196,max_query=1000):
shape = oimg.shape
N = oimg.size
start_qry = 0
end_qry = 0
# flatten an image
original = oimg.copy().reshape(-1)
x = timg.copy().reshape(-1)
nquery = 0
D = np.zeros(max_query+500).astype(int)
d = l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
ngroup = N//npix
terminate = False
#while True:
while not terminate:
# draw random shuffling of all indices
indices = list(range(N))
random.shuffle(indices)
for index in range(ngroup):
# change multiple pixels (a group)
idx = indices[index*npix:(index+1)*npix]
old_value = x[idx]
new_value = original[idx]
tmp = np.abs(old_value - new_value)
if tmp.sum()==0:
continue
x[idx] = new_value
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
# if adversarial, restart from there
if is_adversarial:
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d = l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
if nquery%200 == 0:
print('nqry = {}; Reset value to original -> new distance: {}; L0 = {}; pred label: {}' .format(nquery,distance,d,self.model.predict_label(torch.from_numpy(x.reshape(shape)).cuda())))
else:
x[idx] = old_value
if nquery>max_query:
terminate = True
break
else:
# no index (group) was succesful
terminate = True
if nquery>max_query:
terminate = True
else:
terminate = False
print('refine stage!')
while not terminate:
# draw random shuffling of all indices
indices = list(range(N))
random.shuffle(indices)
# whether that run through all values made any improvement
improved = False
for index in range(ngroup):
# change multiple pixels (a group)
idx = indices[index*npix:(index+1)*npix]
old_value = x[idx]
original_value = original[idx]
tmp = np.abs(old_value - original_value)
if tmp.sum()==0:
continue
x[idx] = original_value
# check if still adversarial
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
# if adversarial, no binary search needed
if is_adversarial: # pragma: no cover
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
improved = True
else:
adv_value = old_value # x
non_adv_value = original_value # ori
#best_adv_value,nqry = self.binary_search(x, index, adv_value, non_adv_value,shape,olabel,tlabel)
best_adv_value,nqry = self.binary_search(x, idx, adv_value, non_adv_value,shape,olabel,tlabel)
nquery += nqry
tmp2 = old_value - best_adv_value
#if old_value != best_adv_value:
if tmp2.sum() != 0:
x[idx] = best_adv_value
improved = True
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
if nquery%200 == 0:
print('nquery = {}; Set value at {} from {} to {}'
' (original has {}) ->'
' new distance: {}; \npred label:{}; L0:{}'.format(nquery,
index, old_value, best_adv_value,
original_value, distance,
self.model.predict_label(torch.from_numpy(x.reshape(shape)).cuda()) ,d))
else:
x[idx]=old_value
if nquery > max_query:
terminate = True
break
if not improved:
# no improvement for any of the indices
terminate = True
#break
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
D[end_qry:nquery]=d
return x,nquery, D[:nquery]
# ==============================================================================================
def pw_perturb_multiple_scheduling(self,oimg,timg,olabel,tlabel,npix=196,max_query=1000):
shape = oimg.shape
N = oimg.size
start_qry = 0
end_qry = 0
# flatten an image
original = oimg.copy().reshape(-1)
x = timg.copy().reshape(-1)
nquery = 0
D = np.zeros(max_query+500).astype(int)
d = l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
terminate = False
#while True:
while not terminate:
# draw random shuffling of all indices
ngroup = N//npix
indices = list(range(N))
random.shuffle(indices)
for index in range(ngroup):
# change multiple pixels (a group)
idx = indices[index*npix:(index+1)*npix]
old_value = x[idx]
new_value = original[idx]
tmp = np.abs(old_value - new_value)
if tmp.sum()==0:
continue
x[idx] = new_value
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
# if adversarial, restart from there
if is_adversarial:
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d = l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
if nquery%200 == 0:
print('nqry = {}; Reset value to original -> new distance: {}; L0 = {}; pred label: {}' .format(nquery,distance,d,self.model.predict_label(torch.from_numpy(x.reshape(shape)).cuda())))
else:
x[idx] = old_value
if nquery>max_query:
terminate = True
break
else:
# no index (group) was succesful
terminate = True
if npix>=2:
npix //= 2
if nquery>max_query:
terminate = True
else:
terminate = False
print('refine stage!')
while not terminate:
# draw random shuffling of all indices
indices = list(range(N))
random.shuffle(indices)
# whether that run through all values made any improvement
improved = False
for index in range(ngroup):
# change multiple pixels (a group)
idx = indices[index*npix:(index+1)*npix]
old_value = x[idx]
original_value = original[idx]
tmp = np.abs(old_value - original_value)
if tmp.sum()==0:
continue
x[idx] = original_value
# check if still adversarial
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
# if adversarial, no binary search needed
if is_adversarial: # pragma: no cover
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
improved = True
else:
adv_value = old_value # x
non_adv_value = original_value # ori
#best_adv_value,nqry = self.binary_search(x, index, adv_value, non_adv_value,shape,olabel,tlabel)
best_adv_value,nqry = self.binary_search(x, idx, adv_value, non_adv_value,shape,olabel,tlabel)
nquery += nqry
tmp2 = old_value - best_adv_value
#if old_value != best_adv_value:
if tmp2.sum() != 0:
x[idx] = best_adv_value
improved = True
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
if nquery%200 == 0:
print('nquery = {}; Set value at {} from {} to {}'
' (original has {}) ->'
' new distance: {}; \npred label:{}; L0:{}'.format(nquery,
index, old_value, best_adv_value,
original_value, distance,
self.model.predict_label(torch.from_numpy(x.reshape(shape)).cuda()) ,d))
else:
x[idx]=old_value
if nquery > max_query:
terminate = True
break
if not improved:
# no improvement for any of the indices
terminate = True
#break
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
D[end_qry:nquery]=d
return x,nquery, D[:nquery]
# ==============================================================================================
def masking(self,idx,w):
print(w)
c1 = idx
c2 = idx + w*w
c3 = idx + 2*w*w
out = c1#([c1,c2,c3])
return out
def pw_perturb_multiple_px(self,oimg,timg,olabel,tlabel,npix=196,max_query=1000):
shape = oimg.shape
N = oimg.size
start_qry = 0
end_qry = 0
# flatten an image
original = oimg.copy().reshape(-1)
x = timg.copy().reshape(-1)
nquery = 0
D = np.zeros(max_query+500).astype(int)
d = l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
#npix = 48#196
ngroup = N//npix
terminate = False
#while True:
while not terminate:
# draw random shuffling of all indices
indices = list(range(N))
random.shuffle(indices)
for index in range(ngroup):
# change multiple pixels (a group)
idx = masking(indices[index*npix:(index+1)*npix],shape[1]) # from n selected dimensions to 3n dimensions (n selected pixels)
old_value = x[idx]
new_value = original[idx]
tmp = old_value - new_value
if tmp.sum()==0:
continue
x[index*npix:(index+1)*npix] = new_value
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
# if adversarial, restart from there
if is_adversarial:
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d = l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
if nquery%100 == 0:
print('nqry = {}; Reset value to original -> new distance: {}; L0 = {}; pred label: {}' .format(nquery,distance,d,self.model.predict_label(torch.from_numpy(x.reshape(shape)).cuda())))
else:
x[index*npix:(index+1)*npix] = old_value
if nquery>max_query:
terminate = True
break
else:
# no index (group) was succesful
terminate = True
if nquery>max_query:
terminate = True
else:
terminate = False
while not terminate:
# draw random shuffling of all indices
indices = list(range(N))
random.shuffle(indices)
# whether that run through all values made any improvement
improved = False
for index in range(ngroup):
# change multiple pixels (a group)
idx = masking(indices[index*npix:(index+1)*npix],shape[1])
old_value = x[idx]
original_value = original[idx]
tmp = old_value - original_value
if tmp.sum()==0:
continue
x[index*npix:(index+1)*npix] = original_value
# check if still adversarial
nquery += 1
is_adversarial = self.check_adv_status(x.reshape(shape),olabel,tlabel)
# if adversarial, no binary search needed
if is_adversarial: # pragma: no cover
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
improved = True
else:
adv_value = old_value # x
non_adv_value = original_value # ori
best_adv_value,nqry = self.binary_search(x, index, adv_value, non_adv_value,shape,olabel,tlabel)
nquery += nqry
if old_value != best_adv_value:
x[index] = best_adv_value
improved = True
distance = np.linalg.norm(original - x)
start_qry = end_qry
end_qry = nquery
D[start_qry:end_qry]=d
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
print('nquery = {}; Set value at {} from {} to {}'
' (original has {}) ->'
' new distance: {}; \npred label:{}; L0:{}'.format(nquery,
index, old_value, best_adv_value,
original_value, distance,
self.model.predict_label(torch.from_numpy(x.reshape(shape)).cuda()) ,d))
else:
x[index*npix:(index+1)*npix]=old_value
if nquery > max_query:
terminate = True
break
if not improved:
# no improvement for any of the indices
terminate = True
#break
d =l0(torch.from_numpy(oimg),torch.from_numpy(x.reshape(shape)))
D[end_qry:nquery]=d
return x,nquery, D[:nquery]