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architecture.py
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architecture.py
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# Defines model architecture
# Called by train_pipeline.py
# Model layers already defined for FCN8s. (FCN for semantic segmentation, Long et. al.)
# Can be modified to use as FCN32, FCN16 or FCN8s.
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import os
import logging
from math import ceil
import sys
import numpy as np
import tensorflow as tf
VGG_MEAN = [103.939, 116.779, 123.68]
class FCN8VGG:
def __init__(self, vgg16_npy_path=None):
# locate vgg16.npy weights dictionary
if vgg16_npy_path is None:
path = sys.modules[self.__class__.__module__].__file__
# print path
path = os.path.abspath(os.path.join(path, os.pardir))
# print path
path = os.path.join(path, "vgg16.npy")
print(path)
vgg16_npy_path = path
# Load VGG16 pre-trained weights data dictionary
"""Dictionary keys:
conv1_1, conv1_2,
conv2_1, conv2_2,
conv3_1, conv3_2, conv3_3,
conv4_1, conv4_2, conv4_3,
conv5_1, conv5_2, conv5_3,
fc6, fc7, fc8
"""
self.data_dict = np.load(vgg16_npy_path, encoding='latin1').item()
self.wd = 5e-4 # weight decay factor
print("npy file loaded")
def build(self, rgb, train=True, num_classes=2, random_init_fc8=True,
debug=True):
"""
Build the VGG model using loaded weights
Parameters
----------
rgb: image batch tensor
Image in rgb shap. Scaled to Intervall [0, 255]
train: bool
Whether to build train or inference graph
num_classes: int
How many classes should be predicted (by fc8)
random_init_fc8 : bool
Whether to initialize fc8 layer randomly.
Finetuning is required in this case.
debug: bool
Whether to print additional Debug Information.
"""
# Convert RGB to BGR
with tf.name_scope('Processing'):
red, green, blue = tf.split(3, 3, rgb)
bgr = tf.concat(3, [
blue - VGG_MEAN[0],
green - VGG_MEAN[1],
red - VGG_MEAN[2],
])
if debug:
bgr = tf.Print(bgr, [tf.shape(bgr)],
message='Shape of input image: ',
summarize=4, first_n=1)
self.conv1_1 = self._conv_layer(bgr, "conv1_1")
self.conv1_2 = self._conv_layer(self.conv1_1, "conv1_2")
self.pool1 = self._max_pool(self.conv1_2, 'pool1', debug)
self.conv2_1 = self._conv_layer(self.pool1, "conv2_1")
self.conv2_2 = self._conv_layer(self.conv2_1, "conv2_2")
self.pool2 = self._max_pool(self.conv2_2, 'pool2', debug)
self.conv3_1 = self._conv_layer(self.pool2, "conv3_1")
self.conv3_2 = self._conv_layer(self.conv3_1, "conv3_2")
self.conv3_2 = self._conv_layer(self.conv3_2, "conv3_3")
self.pool3 = self._max_pool(self.conv3_2, 'pool3', debug)
self.conv4_1 = self._conv_layer(self.pool3, "conv4_1")
self.conv4_2 = self._conv_layer(self.conv4_1, "conv4_2")
self.conv4_3 = self._conv_layer(self.conv4_2, "conv4_3")
self.pool4 = self._max_pool(self.conv4_3, 'pool4', debug)
self.conv5_1 = self._conv_layer(self.pool4, "conv5_1")
self.conv5_2 = self._conv_layer(self.conv5_1, "conv5_2")
self.conv5_3 = self._conv_layer(self.conv5_2, "conv5_3")
self.pool5 = self._max_pool(self.conv5_3, 'pool5', debug)
# Fully connected layers, converted to convolutions. Named fc6 and fc7 to retain nomenclature from VGG16
# Fully connected layer as a convolution [7x7x512, 4096 filters]
self.fc6 = self._fc_layer(self.pool5, "fc6")
if train:
self.fc6 = tf.nn.dropout(self.fc6, 0.5)
# Fully connected layer as a convolution [1x1x4096, 4096 filters]
self.fc7 = self._fc_layer(self.fc6, "fc7")
if train:
self.fc7 = tf.nn.dropout(self.fc7, 0.5)
self.conv_11 = self._fc_layer(self.fc7, "conv_11", num_classes=2)
#if random_init_fc8:
# self.score_fr = self._score_layer(self.fc7, "score_fr",
# num_classes)
#else:
# self.score_fr = self._fc_layer(self.fc7, "score_fr",
# num_classes=num_classes,
# relu=False)
#self.pred = tf.argmax(self.score_fr, dimension=3)
self.conv_10 = self._fc_layer(self.pool4, "conv_10", num_classes=2)
self.deconv_1 = self._upscore_layer(self.conv_11,
shape=tf.shape(bgr),
num_classes=2,
debug=debug, name='deconv_1',
ksize=64, stride=32)
#self.conv_out = self._fc_layer(self.deconv_1, "conv_out", debug=True, num_classes=2)
self.pred_up = tf.argmax(self.deconv_1, dimension=3)
"""
self.score_pool4 = self._score_layer(self.pool4, "score_pool4",
num_classes=num_classes)
self.fuse_pool4 = tf.add(self.deconv_1, self.score_pool4)
self.deconv_2 = self._upscore_layer(self.fuse_pool4,
shape=tf.shape(self.pool3),
num_classes=num_classes,
debug=debug, name='deconv_2',
ksize=4, stride=2)
self.score_pool3 = self._score_layer(self.pool3, "score_pool3",
num_classes=num_classes)
self.fuse_pool3 = tf.add(self.deconv_2, self.score_pool3)
self.deconv_3 = self._upscore_layer(self.fuse_pool3,
shape=tf.shape(bgr),
num_classes=num_classes,
debug=debug, name='deconv_3',
ksize=16, stride=8)
"""
#self.logits = self._softmax(self.deconv_1, 2)
#self.pred_up = tf.argmax(self.conv_out, dimension=3)
def _softmax(self, bottom, num_classes):
# computes softmax
with tf.variable_scope('logits') as scope:
n1 = tf.to_float(bottom.get_shape()[1])
#n1size = 1*750*750*2
stddev = (1 / n1)**0.5
weights = self._variable_with_weight_decay(shape=[n1 , num_classes],
stddev=stddev, wd=0.0)
biases = self._bias_variable([num_classes])
logits = tf.add(tf.matmul(bottom, weights), bias, name=scope.name)
_activation_summary(logits)
return logits
def _max_pool(self, bottom, name, debug):
pool = tf.nn.max_pool(bottom, ksize=[1, 2, 2, 1], strides=[1, 2, 2, 1],
padding='SAME', name=name)
if debug:
pool = tf.Print(pool, [tf.shape(pool)],
message='Shape of %s' % name,
summarize=4, first_n=1)
return pool
def _deconv_reshape(self, bottom, num_classes=2):
logits = tf.to_float(tf.reshape(bottom, (-1, num_classes)))
return logits
def _conv_layer(self, bottom, name):
with tf.variable_scope(name) as scope:
filt = self.get_conv_filter(name)
conv = tf.nn.conv2d(bottom, filt, [1, 1, 1, 1], padding='SAME')
conv_biases = self.get_bias(name)
bias = tf.nn.bias_add(conv, conv_biases)
relu = tf.nn.relu(bias)
# Add summary to Tensorboard
_activation_summary(relu)
return relu
def _fc_layer(self, bottom, name, num_classes=None,
relu=True, debug=True):
with tf.variable_scope(name) as scope:
shape = bottom.get_shape().as_list()
if name == 'fc6':
filt = self.get_fc_weight_reshape(name, [7, 7, 512, 4096])
elif name == 'score_fr':
name = 'fc8' # Name of score_fr layer in VGG Model
filt = self.get_fc_weight_reshape(name, [1, 1, 4096, 1000],
num_classes=num_classes)
elif name == 'conv_11':
filt = self.get_fc_weight(bottom, name=name)
elif name == 'conv_10':
filt = self.get_fc_weight(bottom, name=name)
elif name == 'conv_out':
filt = self.get_fc_weight(bottom, name=name)
else:
filt = self.get_fc_weight_reshape(name, [1, 1, 4096, 4096])
conv = tf.nn.conv2d(bottom, filt, [1, 1, 1, 1], padding='SAME')
if name == 'conv_11':
conv_biases = self.higher_bias(bottom, name=name)
elif name == 'conv_10':
conv_biases = self.higher_bias(bottom, name=name)
elif name == 'conv_out':
conv_biases = self.higher_bias(bottom, name=name)
else:
conv_biases = self.get_bias(name, num_classes=num_classes)
bias = tf.nn.bias_add(conv, conv_biases)
if relu:
bias = tf.nn.relu(bias)
_activation_summary(bias)
if debug:
bias = tf.Print(bias, [tf.shape(bias)],
message='Shape of %s' % name,
summarize=4, first_n=1)
return bias
def _score_layer(self, bottom, name, num_classes):
with tf.variable_scope(name) as scope:
# get number of input channels
in_features = bottom.get_shape()[3].value
shape = [1, 1, in_features, num_classes]
# Initialization scheme
if name == "score_fr":
num_input = in_features
stddev = (2 / num_input)**0.5
elif name == "score_pool4":
stddev = 0.001
elif name == "score_pool3":
stddev = 0.0001
# Apply convolution
w_decay = self.wd
weights = self._variable_with_weight_decay(shape, stddev, w_decay)
conv = tf.nn.conv2d(bottom, weights, [1, 1, 1, 1], padding='SAME')
# Apply bias
conv_biases = self._bias_variable([num_classes], constant=0.0)
bias = tf.nn.bias_add(conv, conv_biases)
_activation_summary(bias)
return bias
def _upscore_layer(self, bottom, shape,
num_classes, name, debug,
ksize=4, stride=2):
strides = [1, stride, stride, 1]
with tf.variable_scope(name):
in_features = bottom.get_shape()[3].value
if shape is None:
# Compute shape out of Bottom
in_shape = tf.shape(bottom)
h = ((in_shape[1] - 1) * stride) + 1
w = ((in_shape[2] - 1) * stride) + 1
new_shape = [in_shape[0], h, w, num_classes]
else:
new_shape = [shape[0], shape[1], shape[2], num_classes]
output_shape = tf.pack(new_shape)
logging.debug("Layer: %s, Fan-in: %d" % (name, in_features))
f_shape = [ksize, ksize, num_classes, in_features]
# create
num_input = ksize * ksize * in_features / stride
stddev = (2 / num_input)**0.5
weights = self.get_deconv_filter(f_shape)
deconv = tf.nn.conv2d_transpose(bottom, weights, output_shape,
strides=strides, padding='SAME')
if debug:
deconv = tf.Print(deconv, [tf.shape(deconv)],
message='Shape of %s' % name,
summarize=4, first_n=1)
_activation_summary(deconv)
return deconv
def get_deconv_filter(self, f_shape):
width = f_shape[0]
heigh = f_shape[0]
f = ceil(width/2.0)
c = (2 * f - 1 - f % 2) / (2.0 * f)
bilinear = np.zeros([f_shape[0], f_shape[1]])
for x in range(width):
for y in range(heigh):
value = (1 - abs(x / f - c)) * (1 - abs(y / f - c))
bilinear[x, y] = value
weights = np.zeros(f_shape)
for i in range(f_shape[2]):
weights[:, :, i, i] = bilinear
init = tf.constant_initializer(value=weights,
dtype=tf.float32)
return tf.get_variable(name="up_filter", initializer=init,
shape=weights.shape)
def get_conv_filter(self, name):
init = tf.constant_initializer(value=self.data_dict[name][0],
dtype=tf.float32)
shape = self.data_dict[name][0].shape
print('Layer name: %s' % name)
print('Layer shape: %s' % str(shape))
var = tf.get_variable(name="filter", initializer=init, shape=shape)
if not tf.get_variable_scope().reuse:
weight_decay = tf.mul(tf.nn.l2_loss(var), self.wd,
name='weight_loss')
tf.add_to_collection('losses', weight_decay)
return var
def get_bias(self, name, num_classes=None):
bias_weights = self.data_dict[name][1]
shape = self.data_dict[name][1].shape
if name == 'fc8':
bias_weights = self._bias_reshape(bias_weights, shape[0],
num_classes)
shape = [num_classes]
init = tf.constant_initializer(value=bias_weights,
dtype=tf.float32)
return tf.get_variable(name="biases", initializer=init, shape=shape)
def higher_bias(self,bottom, name):
if name == 'conv_11':
shape = [2]
elif name == 'conv_10':
shape = [2]
elif name == 'conv_out':
shape = [3]
init = tf.constant_initializer(value=0.1,dtype=tf.float32)
var = tf.get_variable(name="biases", initializer=init, shape=shape)
return var
def get_fc_weight_reshape(self, name, shape, num_classes=None):
print('Layer name: %s' % name)
print('Layer shape: %s' % shape)
weights = self.data_dict[name][0]
weights = weights.reshape(shape)
if num_classes is not None:
weights = self._filter_weights_reshape(weights, shape,
num_new=num_classes)
init = tf.constant_initializer(value=weights,
dtype=tf.float32)
return tf.get_variable(name="weights", initializer=init, shape=shape)
def get_fc_weight(self, bottom, name):
if name == 'conv_11':
shape = [1,1,4096,2]
elif name == 'conv_10':
shape = [1,1,512,2]
elif name == 'conv_out':
shape = [3,3,2,3]
init = tf.constant_initializer(value=0.1,
dtype=tf.float32)
#shape = self.data_dict[name][0].shape
var = tf.get_variable(name="weights", initializer=init, shape=shape)
if not tf.get_variable_scope().reuse:
weight_decay = tf.mul(tf.nn.l2_loss(var), self.wd,
name='weight_loss')
tf.add_to_collection('losses', weight_decay)
return var
def _bias_reshape(self, bweight, num_orig, num_new):
""" Build bias weights for filter produces with `_filter_weights_reshape`
"""
n_averaged_elements = num_orig//num_new
avg_bweight = np.zeros(num_new)
for i in range(0, num_orig, n_averaged_elements):
start_idx = i
end_idx = start_idx + n_averaged_elements
avg_idx = start_idx//n_averaged_elements
if avg_idx == num_new:
break
avg_bweight[avg_idx] = np.mean(bweight[start_idx:end_idx])
return avg_bweight
def _filter_weights_reshape(self, fweight, shape, num_new):
""" Produce weights for a reduced fully-connected layer.
FC8 of VGG produces 1000 classes. Most semantic segmentation
task require much less classes. This reshapes the original weights
to be used in a fully-convolutional layer which produces num_new
classes. To archive this the average (mean) of n adjanced classes is
taken.
Consider reordering fweight, to perserve semantic meaning of the
weights.
Args:
fweight: original weights
shape: shape of the desired fully-convolutional layer
num_new: number of new classes
Returns:
Filter weights for `num_new` classes.
"""
num_orig = shape[3]
shape[3] = num_new
assert(num_new < num_orig)
n_averaged_elements = num_orig//num_new
avg_fweight = np.zeros(shape)
for i in range(0, num_orig, n_averaged_elements):
start_idx = i
end_idx = start_idx + n_averaged_elements
avg_idx = start_idx//n_averaged_elements
if avg_idx == num_new:
break
avg_fweight[:, :, :, avg_idx] = np.mean(
fweight[:, :, :, start_idx:end_idx], axis=3)
return avg_fweight
def _variable_with_weight_decay(self, shape, stddev, wd):
"""Helper to create an initialized Variable with weight decay.
Note that the Variable is initialized with a truncated normal
distribution.
A weight decay is added only if one is specified.
Args:
name: name of the variable
shape: list of ints
stddev: standard deviation of a truncated Gaussian
wd: add L2Loss weight decay multiplied by this float. If None, weight
decay is not added for this Variable.
Returns:
Variable Tensor
"""
initializer = tf.truncated_normal_initializer(stddev=stddev)
var = tf.get_variable('weights', shape=shape,
initializer=initializer)
if wd and (not tf.get_variable_scope().reuse):
weight_decay = tf.mul(tf.nn.l2_loss(var), wd, name='weight_loss')
tf.add_to_collection('losses', weight_decay)
return var
def _bias_variable(self, shape, constant=0.0):
initializer = tf.constant_initializer(constant)
return tf.get_variable(name='biases', shape=shape,
initializer=initializer)
def _activation_summary(x):
"""Helper to create summaries for activations.
Creates a summary that provides a histogram of activations.
Creates a summary that measure the sparsity of activations.
Args:
x: Tensor
Returns:
nothing
"""
# Remove 'tower_[0-9]/' from the name in case this is a multi-GPU training
# session. This helps the clarity of presentation on tensorboard.
tensor_name = x.op.name
# tensor_name = re.sub('%s_[0-9]*/' % TOWER_NAME, '', x.op.name)
tf.histogram_summary(tensor_name + '/activations', x)
tf.scalar_summary(tensor_name + '/sparsity', tf.nn.zero_fraction(x))