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generator.py
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generator.py
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#!/usr/bin/env python3
from argparse import ArgumentParser, ArgumentDefaultsHelpFormatter
from string import ascii_lowercase
import collections
def data_layer(name):
data_layer_str = '''name: "%s"
layer {
name: "data"
type: "Data"
top: "data"
top: "label"
include {
phase: TRAIN
}
transform_param {
mirror: true
crop_size: 224
mean_value: 104
mean_value: 117
mean_value: 123
}
data_param {
source: "../ilsvrc2012/ilsvrc2012_train"
batch_size: 32
backend: LMDB
}
}
layer {
name: "data"
type: "Data"
top: "data"
top: "label"
include {
phase: TEST
}
transform_param {
mirror: false
crop_size: 224
mean_value: 104
mean_value: 117
mean_value: 123
}
data_param {
source: "../ilsvrc2012/ilsvrc2012_val"
batch_size: 1
backend: LMDB
}
}
''' % name
return data_layer_str
def conv_layer(conv_params, name, bottom, top=None, filler="msra"):
if len(conv_params) == 3:
conv_params = conv_params + ((conv_params[0] - 1) // 2,)
kernel_size, num_output, stride, pad = conv_params
if top is None:
top = name
conv_layer_str = ('''layer {{
bottom: "{bottom}"
top: "{top}"
name: "{name}"
type: "Convolution"
convolution_param {{
num_output: {num_output}
kernel_size: {kernel_size}
pad: {pad}
stride: {stride}
weight_filler {{
type: "msra"
}}
'''\
+ ('''bias_term: false\n''' if USE_BN else
'''bias_filler {{
type: "constant"
value: 0
}}''') +'''
}}
}}
''').format(**locals())
return conv_layer_str
def bn_layer(name, bottom, top):
bn_layer_str = '''layer {{
bottom: "{top}"
top: "{top}"
name: "bn{name}"
type: "BatchNorm"
batch_norm_param {{
use_global_stats: false
}}
}}
layer {{
bottom: "{top}"
top: "{top}"
name: "scale{name}"
type: "Scale"
scale_param {{
bias_term: true
}}
}}
'''.format(**locals())
return bn_layer_str
def in_place_bn(name, activation):
return bn_layer(name, activation, activation)
def pooling_layer(kernel_size, stride, pool_type, layer_name, bottom, top=None):
if top is None:
top = layer_name
pool_layer_str = '''layer {
bottom: "%s"
top: "%s"
name: "%s"
type: "Pooling"
pooling_param {
kernel_size: %d
stride: %d
pool: %s
}
}
'''%(bottom, top, layer_name, kernel_size, stride, pool_type)
return pool_layer_str
def ave_pool(kernel_size, stride, layer_name, bottom):
return pooling_layer(kernel_size, stride, 'AVE', layer_name, bottom, layer_name)
def fc_layer(layer_name, bottom, top, num_output=1000):
fc_layer_str = '''layer {
bottom: "%s"
top: "%s"
name: "%s"
type: "InnerProduct"
param {
lr_mult: 1
decay_mult: 1
}
param {
lr_mult: 2
decay_mult: 1
}
inner_product_param {
num_output: %d
weight_filler {
type: "xavier"
}
bias_filler {
type: "constant"
value: 0
}
}
}
'''%(bottom, top, layer_name, num_output)
return fc_layer_str
def eltwise_layer(layer_name, bottom_1, bottom_2, top, op_type="SUM"):
eltwise_layer_str = '''layer {
bottom: "%s"
bottom: "%s"
top: "%s"
name: "%s"
type: "Eltwise"
eltwise_param {
operation: %s
}
}
'''%(bottom_1, bottom_2, top, layer_name, op_type)
return eltwise_layer_str
def activation_layer(layer_name, bottom, top, act_type="ReLU"):
act_layer_str = '''layer {
bottom: "%s"
top: "%s"
name: "%s"
type: "%s"
}
'''%(bottom, top, layer_name, act_type)
return act_layer_str
def in_place_relu(activation_name):
return activation_layer(activation_name + '_relu', activation_name, activation_name, act_type='ReLU')
def softmax_loss(bottom):
softmax_loss_str = '''layer {
bottom: "%s"
bottom: "label"
name: "loss"
type: "SoftmaxWithLoss"
top: "loss"
}
layer {
bottom: "%s"
bottom: "label"
top: "acc/top-1"
name: "acc/top-1"
type: "Accuracy"
include {
phase: TEST
}
}
layer {
bottom: "%s"
bottom: "label"
top: "acc/top-5"
name: "acc/top-5"
type: "Accuracy"
include {
phase: TEST
}
accuracy_param {
top_k: 5
}
}
'''%(bottom, bottom, bottom)
return softmax_loss_str
def conv1_layers():
layers = conv_layer((7, 64, 2), 'conv1', 'data')
if USE_BN:
layers += in_place_bn('_conv1', 'conv1')
layers += in_place_relu('conv1') \
+ pooling_layer(3, 2, 'MAX', 'pool1', 'conv1')
return layers
def normalized_conv_layers(conv_params, level, branch, prev_top, activation=True):
"""conv -> batch_norm -> ReLU"""
name = '%s_branch%s' % (level, branch)
activation_name = 'res' + name
layers = conv_layer(conv_params, activation_name, prev_top)
if USE_BN:
layers += in_place_bn(name, activation_name)
if activation:
layers += in_place_relu(activation_name)
return layers, activation_name
def bottleneck_layers(prev_top, level, num_output, shortcut_activation=None, shortcut_str='', shortcut_stride=1):
"""1x1 -> 3x3 -> 1x1"""
if shortcut_activation is None:
shortcut_activation = prev_top
all_layers = shortcut_str if USE_SHORTCUT else ''
layers, prev_top = normalized_conv_layers((1, num_output, shortcut_stride), level, '2a', prev_top)
all_layers += layers
layers, prev_top = normalized_conv_layers((3, num_output, 1), level, '2b', prev_top)
all_layers += layers
layers, prev_top = normalized_conv_layers((1, num_output*4, 1), level, '2c', prev_top, activation=(not USE_SHORTCUT))
all_layers += layers
if USE_SHORTCUT:
final_activation = 'res' + level
all_layers += eltwise_layer(final_activation, shortcut_activation, prev_top, final_activation) \
+ in_place_relu(final_activation)
return all_layers, prev_top if not USE_SHORTCUT else final_activation
def stacked_layers(prev_top, level, num_output, shortcut_activation=None, shortcut_str='', shortcut_stride=1):
"""3x3 -> 3x3"""
if shortcut_activation is None:
shortcut_activation = prev_top
all_layers = shortcut_str if USE_SHORTCUT else ''
layers, prev_top = normalized_conv_layers((3, num_output, shortcut_stride), level, '2a', prev_top)
all_layers += layers
layers, prev_top = normalized_conv_layers((3, num_output, 1), level, '2b', prev_top, activation=(not USE_SHORTCUT))
all_layers += layers
if USE_SHORTCUT:
final_activation = 'res' + level
all_layers += eltwise_layer(final_activation, shortcut_activation, prev_top, final_activation) \
+ in_place_relu(final_activation)
return all_layers, prev_top if not USE_SHORTCUT else final_activation
def bottleneck_layer_set(
prev_top, # Previous activation name
level, # Level number of this set, used for naming
num_output, # "num_output" param for most layers of this set
num_bottlenecks, # number of bottleneck sets
shortcut_params='default', # Conv params of the shortcut convolution
sublevel_naming='letters', # Naming scheme of layer sets. MSRA sometimes uses letters sometimes numbers
make_layers=bottleneck_layers, # Function to make layers with
):
"""A set of bottleneck layers, with the first one having an convolution shortcut to accomodate size"""
if shortcut_params == 'default':
shortcut_params = (1, num_output*(4 if make_layers is bottleneck_layers else 1), 2, 0)
shortcut_str, shortcut_activation = normalized_conv_layers(shortcut_params, '%da'%level, '1', prev_top, activation=False)
network_str = ''
if sublevel_naming == 'letters' and num_bottlenecks <= 26:
sublevel_names = ascii_lowercase[:num_bottlenecks]
else:
sublevel_names = ['a'] + ['b' + str(i) for i in range(1, num_bottlenecks)]
for index, sublevel in enumerate(sublevel_names):
if index != 0:
shortcut_activation, shortcut_str = None, ''
layers, prev_top = make_layers(prev_top, '%d%s'%(level, sublevel), num_output, shortcut_activation, shortcut_str)
else:
layers, prev_top = make_layers(prev_top, '%d%s'%(level, sublevel), num_output, shortcut_activation, shortcut_str, shortcut_params[2])
network_str += layers
return network_str, prev_top
def resnet(variant='50'): # Currently supports 50, 101, 152
Bottlenecks = collections.namedtuple('Bottlenecks', ['level', 'num_bottlenecks', 'sublevel_naming'])
Bottlenecks.__new__.__defaults__ = ('letters',)
StackedSets = type('StackedSets', (Bottlenecks,), {}) # Makes copy of Bottlenecks class
network_str = data_layer('ResNet-' + variant)
network_str += conv1_layers()
prev_top = 'pool1'
levels = {
'18': (
StackedSets(2, 2),
StackedSets(3, 2),
StackedSets(4, 2),
StackedSets(5, 2),
),
'34': (
StackedSets(2, 3),
StackedSets(3, 4),
StackedSets(4, 6),
StackedSets(5, 3),
),
'50': (
Bottlenecks(2, 3),
Bottlenecks(3, 4),
Bottlenecks(4, 6),
Bottlenecks(5, 3),
),
'101': (
Bottlenecks(2, 3),
Bottlenecks(3, 4, 'numbered'),
Bottlenecks(4, 23, 'numbered'),
Bottlenecks(5, 3),
),
'152': (
Bottlenecks(2, 3),
Bottlenecks(3, 8, 'numbered'),
Bottlenecks(4, 36, 'numbered'),
Bottlenecks(5, 3),
)
}
for layer_desc in levels[variant]:
level, num_bottlenecks, sublevel_naming = layer_desc
if level == 2:
shortcut_params = (1, (256 if type(layer_desc) is Bottlenecks else 64), 1, 0)
else:
shortcut_params = 'default'
layers, prev_top = bottleneck_layer_set(prev_top, level, 16*(2**level), num_bottlenecks,
shortcut_params=shortcut_params, sublevel_naming=sublevel_naming,
make_layers=(bottleneck_layers if type(layer_desc) is Bottlenecks else stacked_layers))
network_str += layers
network_str += ave_pool(7, 1, 'pool5', prev_top)
network_str += fc_layer('fc1000', 'pool5', 'fc1000', num_output=1000)
network_str += softmax_loss('fc1000')
return network_str
def main():
for net in ('18', '34', '50', '101', '152'):
with open('ResNet_{}_train_val.prototxt'.format(net), 'w') as fp:
fp.write(resnet(net))
USE_SHORTCUT = True
USE_BN = True
if __name__ == '__main__':
main()