Created
March 27, 2017 13:35
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# Picking some internal layer. Note that we use outputs before applying the ReLU nonlinearity | |
# to have non-zero gradients for features with negative initial activations. | |
layer = 'mixed4d_3x3_bottleneck_pre_relu' | |
channel = 139 # picking some feature channel to visualize | |
# start with a gray image with a little noise | |
img_noise = np.random.uniform(size=(224,224,3)) + 100.0 | |
def showarray(a, fmt='jpeg'): | |
a = np.uint8(np.clip(a, 0, 1)*255) | |
f = BytesIO() | |
PIL.Image.fromarray(a).save(f, fmt) | |
display(Image(data=f.getvalue())) | |
def visstd(a, s=0.1): | |
'''Normalize the image range for visualization''' | |
return (a-a.mean())/max(a.std(), 1e-4)*s + 0.5 | |
def T(layer): | |
'''Helper for getting layer output tensor''' | |
return graph.get_tensor_by_name("import/%s:0"%layer) | |
def render_naive(t_obj, img0=img_noise, iter_n=20, step=1.0): | |
t_score = tf.reduce_mean(t_obj) # defining the optimization objective | |
t_grad = tf.gradients(t_score, t_input)[0] # behold the power of automatic differentiation! | |
img = img0.copy() | |
for i in range(iter_n): | |
g, score = sess.run([t_grad, t_score], {t_input:img}) | |
# normalizing the gradient, so the same step size should work | |
g /= g.std()+1e-8 # for different layers and networks | |
img += g*step | |
print(score, end = ' ') | |
clear_output() | |
showarray(visstd(img)) | |
render_naive(T(layer)[:,:,:,channel]) |
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