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OpenDAS
dlib
Commits
2f74b3a0
Commit
2f74b3a0
authored
May 07, 2017
by
Davis King
Browse files
Improved example python script
parent
0f6ddb64
Changes
1
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58 additions
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+58
-9
tools/convert_dlib_nets_to_caffe/dlib_driver.py
tools/convert_dlib_nets_to_caffe/dlib_driver.py
+58
-9
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tools/convert_dlib_nets_to_caffe/dlib_driver.py
View file @
2f74b3a0
#!/usr/bin/env python
#!/usr/bin/env python
# This script takes the dlib lenet model trained by the
# examples/dnn_introduction_ex.cpp example program and runs it using caffe.
import
caffe
import
caffe
import
numpy
as
np
import
numpy
as
np
import
auto_generated_python
as
dlib_model
# Before you run this program, you need to run dnn_introduction_ex.cpp to get a
# dlib lenet model. Then you need to convert that model into a "dlib to caffe
# model" python script. You can do this using the command line program
# included with dlib: tools/convert_dlib_nets_to_caffe. That program will
# output a lenet_dlib_to_caffe_model.py file. This line here imports that
# file.
import
lenet_dlib_to_caffe_model
as
dlib_model
# lenet_dlib_to_caffe_model defines a function, save_as_caffe_model() that does
# the work of converting dlib's DNN model to a caffe model and saves it to disk
# in two files. These files are all you need to run the model with caffe.
dlib_model
.
save_as_caffe_model
(
'dlib_model_def.prototxt'
,
'dlib_model.proto'
)
dlib_model
.
save_as_caffe_model
(
'dlib_model_def.prototxt'
,
'dlib_model.proto'
)
# Now that we created the caffe model files, we can load them into a caffe Net object.
net
=
caffe
.
Net
(
'dlib_model_def.prototxt'
,
'dlib_model.proto'
,
caffe
.
TEST
);
#
data = np.ones((dlib_model.batch_size, dlib_model.input_k, dlib_model.input_nr, dlib_model.input_nc), dtype='float32')
#
Now lets do a test, we will run one of the MNIST images through the network.
# an MNIST image of a 7, it is the very first testing image in MNIST (i.e. wrt dnn_introduction_ex.cpp, it is testing_images[0])
# An MNIST image of a 7, it is the very first testing image in MNIST (i.e. wrt dnn_introduction_ex.cpp, it is testing_images[0])
data
=
np
.
array
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dtype
=
'float32'
);
data
=
np
.
array
([
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59
,
249
,
254
,
62
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
133
,
254
,
187
,
5
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
9
,
205
,
248
,
58
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
126
,
254
,
182
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
75
,
251
,
240
,
57
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
19
,
221
,
254
,
166
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
3
,
203
,
254
,
219
,
35
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
38
,
254
,
254
,
77
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
31
,
224
,
254
,
115
,
1
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
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0
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0
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0
,
0
,
0
,
0
,
0
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0
,
0
,
0
,
0
,
0
,
0
,
133
,
254
,
254
,
52
,
0
,
0
,
0
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0
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0
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0
,
0
,
0
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0
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0
,
0
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0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
61
,
242
,
254
,
254
,
52
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
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0
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0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
121
,
254
,
254
,
219
,
40
,
0
,
0
,
0
,
0
,
0
,
0
,
0
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0
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0
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0
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0
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0
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0
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0
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0
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0
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0
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0
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0
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0
,
0
,
0
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0
,
121
,
254
,
207
,
18
,
0
,
0
,
0
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0
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0
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0
,
0
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0
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0
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0
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0
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0
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0
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0
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0
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0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
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0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
,
0
],
dtype
=
'float32'
);
data
.
shape
=
(
dlib_model
.
batch_size
,
dlib_model
.
input_k
,
dlib_model
.
input_nr
,
dlib_model
.
input_nc
);
data
.
shape
=
(
dlib_model
.
batch_size
,
dlib_model
.
input_k
,
dlib_model
.
input_nr
,
dlib_model
.
input_nc
);
labels
=
np
.
ones
((
dlib_model
.
batch_size
),
dtype
=
'float32'
)
net
=
caffe
.
Net
(
'dlib_model_def.prototxt'
,
'dlib_model.proto'
,
caffe
.
TEST
);
# labels isn't logically needed but there doesn't seem to be a way to use
# caffe's Net interface without providing a superfluous input array. So we do
# that here.
labels
=
np
.
ones
((
dlib_model
.
batch_size
),
dtype
=
'float32'
)
# Give the image to caffe
net
.
set_input_arrays
(
data
/
256
,
labels
)
net
.
set_input_arrays
(
data
/
256
,
labels
)
# Run the data through the network and get the results.
out
=
net
.
forward
()
out
=
net
.
forward
()
# print outputs, looping over minibatch
# Print outputs, looping over minibatch. You should see that the network
# correctly classifies the image (it's the number 7).
for
i
in
xrange
(
dlib_model
.
batch_size
):
for
i
in
xrange
(
dlib_model
.
batch_size
):
print
out
[
'fc1'
][
i
]
print
i
,
'net final layer = '
,
out
[
'fc1'
][
i
]
print
i
,
'predicted number ='
,
np
.
argmax
(
out
[
'fc1'
][
i
])
#the output from dlib for this image is : -3.63389 1.80282 -2.90573 3.48321 -0.196478 -3.03566 -10.1899 13.6161 -0.882383 0.0365817
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