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detect_and_align.py
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detect_and_align.py
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from six import string_types, iteritems
from scipy import misc
import tensorflow as tf
import numpy as np
import os
import cv2
def align_image(img, pnet, rnet, onet):
margin = 44
image_size = 160
img_size = np.asarray(img.shape)[0:2]
bounding_boxes, landmarks = detect_face(img, pnet, rnet, onet)
nrof_bb = bounding_boxes.shape[0]
padded_bounding_boxes = [None] * nrof_bb
face_patches = [None] * nrof_bb
if nrof_bb > 0:
landmarks = np.stack(landmarks)
landmarks = np.transpose(landmarks, (1, 0))
for i in range(nrof_bb):
det = np.squeeze(bounding_boxes[i, 0:4])
bb = np.zeros(4, dtype=np.int32)
bb[0] = np.maximum(det[0] - margin / 2, 0)
bb[1] = np.maximum(det[1] - margin / 2, 0)
bb[2] = np.minimum(det[2] + margin / 2, img_size[1])
bb[3] = np.minimum(det[3] + margin / 2, img_size[0])
cropped = img[bb[1]:bb[3], bb[0]:bb[2], :]
aligned = misc.imresize(cropped, (image_size, image_size), interp='bilinear')
prewhitened = prewhiten(aligned)
padded_bounding_boxes[i] = bb
face_patches[i] = prewhitened
return face_patches, padded_bounding_boxes, landmarks
def prewhiten(x):
mean = np.mean(x)
std = np.std(x)
std_adj = np.maximum(std, 1.0 / np.sqrt(x.size))
y = np.multiply(np.subtract(x, mean), 1 / std_adj)
return y
def imresample(img, sz):
im_data = cv2.resize(img, (sz[1], sz[0]), interpolation=cv2.INTER_AREA)
return im_data
def generateBoundingBox(imap, reg, scale, t):
# use heatmap to generate bounding boxes
stride = 2
cellsize = 12
imap = np.transpose(imap)
dx1 = np.transpose(reg[:, :, 0])
dy1 = np.transpose(reg[:, :, 1])
dx2 = np.transpose(reg[:, :, 2])
dy2 = np.transpose(reg[:, :, 3])
y, x = np.where(imap >= t)
if y.shape[0] == 1:
dx1 = np.flipud(dx1)
dy1 = np.flipud(dy1)
dx2 = np.flipud(dx2)
dy2 = np.flipud(dy2)
score = imap[(y, x)]
reg = np.transpose(np.vstack([dx1[(y, x)], dy1[(y, x)], dx2[(y, x)], dy2[(y, x)]]))
if reg.size == 0:
reg = np.empty((0, 3))
bb = np.transpose(np.vstack([y, x]))
q1 = np.fix((stride * bb + 1) / scale)
q2 = np.fix((stride * bb + cellsize - 1 + 1) / scale)
boundingbox = np.hstack([q1, q2, np.expand_dims(score, 1), reg])
return boundingbox, reg
def nms(boxes, threshold, method):
if boxes.size == 0:
return np.empty((0, 3))
x1 = boxes[:, 0]
y1 = boxes[:, 1]
x2 = boxes[:, 2]
y2 = boxes[:, 3]
s = boxes[:, 4]
area = (x2 - x1 + 1) * (y2 - y1 + 1)
I = np.argsort(s)
pick = np.zeros_like(s, dtype=np.int16)
counter = 0
while I.size > 0:
i = I[-1]
pick[counter] = i
counter += 1
idx = I[0:-1]
xx1 = np.maximum(x1[i], x1[idx])
yy1 = np.maximum(y1[i], y1[idx])
xx2 = np.minimum(x2[i], x2[idx])
yy2 = np.minimum(y2[i], y2[idx])
w = np.maximum(0.0, xx2 - xx1 + 1)
h = np.maximum(0.0, yy2 - yy1 + 1)
inter = w * h
if method is 'Min':
o = inter / np.minimum(area[i], area[idx])
else:
o = inter / (area[i] + area[idx] - inter)
I = I[np.where(o <= threshold)]
pick = pick[0:counter]
return pick
def rerec(bboxA):
# convert bboxA to square
h = bboxA[:, 3] - bboxA[:, 1]
w = bboxA[:, 2] - bboxA[:, 0]
l = np.maximum(w, h)
bboxA[:, 0] = bboxA[:, 0] + w * 0.5 - l * 0.5
bboxA[:, 1] = bboxA[:, 1] + h * 0.5 - l * 0.5
bboxA[:, 2:4] = bboxA[:, 0:2] + np.transpose(np.tile(l, (2, 1)))
return bboxA
def pad(total_boxes, w, h):
# compute the padding coordinates (pad the bounding boxes to square)
tmpw = (total_boxes[:, 2] - total_boxes[:, 0] + 1).astype(np.int32)
tmph = (total_boxes[:, 3] - total_boxes[:, 1] + 1).astype(np.int32)
numbox = total_boxes.shape[0]
dx = np.ones((numbox), dtype=np.int32)
dy = np.ones((numbox), dtype=np.int32)
edx = tmpw.copy().astype(np.int32)
edy = tmph.copy().astype(np.int32)
x = total_boxes[:, 0].copy().astype(np.int32)
y = total_boxes[:, 1].copy().astype(np.int32)
ex = total_boxes[:, 2].copy().astype(np.int32)
ey = total_boxes[:, 3].copy().astype(np.int32)
tmp = np.where(ex > w)
edx.flat[tmp] = np.expand_dims(-ex[tmp] + w + tmpw[tmp], 1)
ex[tmp] = w
tmp = np.where(ey > h)
edy.flat[tmp] = np.expand_dims(-ey[tmp] + h + tmph[tmp], 1)
ey[tmp] = h
tmp = np.where(x < 1)
dx.flat[tmp] = np.expand_dims(2 - x[tmp], 1)
x[tmp] = 1
tmp = np.where(y < 1)
dy.flat[tmp] = np.expand_dims(2 - y[tmp], 1)
y[tmp] = 1
return dy, edy, dx, edx, y, ey, x, ex, tmpw, tmph
def bbreg(boundingbox, reg):
# calibrate bounding boxes
if reg.shape[1] == 1:
reg = np.reshape(reg, (reg.shape[2], reg.shape[3]))
w = boundingbox[:, 2] - boundingbox[:, 0] + 1
h = boundingbox[:, 3] - boundingbox[:, 1] + 1
b1 = boundingbox[:, 0] + reg[:, 0] * w
b2 = boundingbox[:, 1] + reg[:, 1] * h
b3 = boundingbox[:, 2] + reg[:, 2] * w
b4 = boundingbox[:, 3] + reg[:, 3] * h
boundingbox[:, 0:4] = np.transpose(np.vstack([b1, b2, b3, b4]))
return boundingbox
def layer(op):
def layer_decorated(self, *args, **kwargs):
# Automatically set a name if not provided.
name = kwargs.setdefault('name', self.get_unique_name(op.__name__))
# Figure out the layer inputs.
if len(self.terminals) == 0:
raise RuntimeError('No input variables found for layer %s.' % name)
elif len(self.terminals) == 1:
layer_input = self.terminals[0]
else:
layer_input = list(self.terminals)
# Perform the operation and get the output.
layer_output = op(self, layer_input, *args, **kwargs)
# Add to layer LUT.
self.layers[name] = layer_output
# This output is now the input for the next layer.
self.feed(layer_output)
# Return self for chained calls.
return self
return layer_decorated
class Network(object):
def __init__(self, inputs, trainable=True):
# The input nodes for this network
self.inputs = inputs
# The current list of terminal nodes
self.terminals = []
# Mapping from layer names to layers
self.layers = dict(inputs)
# If true, the resulting variables are set as trainable
self.trainable = trainable
self.setup()
def setup(self):
'''Construct the network. '''
raise NotImplementedError('Must be implemented by the subclass.')
def load(self, data_path, session, ignore_missing=False):
'''Load network weights.
data_path: The path to the numpy-serialized network weights
session: The current TensorFlow session
ignore_missing: If true, serialized weights for missing layers are ignored.
'''
data_dict = np.load(data_path, encoding='latin1').item()
for op_name in data_dict:
with tf.variable_scope(op_name, reuse=True):
for param_name, data in iteritems(data_dict[op_name]):
try:
var = tf.get_variable(param_name)
session.run(var.assign(data))
except ValueError:
if not ignore_missing:
raise
def feed(self, *args):
'''Set the input(s) for the next operation by replacing the terminal nodes.
The arguments can be either layer names or the actual layers.
'''
assert len(args) != 0
self.terminals = []
for fed_layer in args:
if isinstance(fed_layer, string_types):
try:
fed_layer = self.layers[fed_layer]
except KeyError:
raise KeyError('Unknown layer name fed: %s' % fed_layer)
self.terminals.append(fed_layer)
return self
def get_output(self):
'''Returns the current network output.'''
return self.terminals[-1]
def get_unique_name(self, prefix):
'''Returns an index-suffixed unique name for the given prefix.
This is used for auto-generating layer names based on the type-prefix.
'''
ident = sum(t.startswith(prefix) for t, _ in self.layers.items()) + 1
return '%s_%d' % (prefix, ident)
def make_var(self, name, shape):
'''Creates a new TensorFlow variable.'''
return tf.get_variable(name, shape, trainable=self.trainable)
def validate_padding(self, padding):
'''Verifies that the padding is one of the supported ones.'''
assert padding in ('SAME', 'VALID')
@layer
def conv(self,
inp,
k_h,
k_w,
c_o,
s_h,
s_w,
name,
relu=True,
padding='SAME',
group=1,
biased=True):
# Verify that the padding is acceptable
self.validate_padding(padding)
# Get the number of channels in the input
c_i = int(inp.get_shape()[-1])
# Verify that the grouping parameter is valid
assert c_i % group == 0
assert c_o % group == 0
# Convolution for a given input and kernel
def convolve(i, k):
return tf.nn.conv2d(i, k, [1, s_h, s_w, 1], padding=padding)
with tf.variable_scope(name) as scope:
kernel = self.make_var('weights', shape=[k_h, k_w, c_i // group, c_o])
# This is the common-case. Convolve the input without any further complications.
output = convolve(inp, kernel)
# Add the biases
if biased:
biases = self.make_var('biases', [c_o])
output = tf.nn.bias_add(output, biases)
if relu:
# ReLU non-linearity
output = tf.nn.relu(output, name=scope.name)
return output
@layer
def prelu(self, inp, name):
with tf.variable_scope(name):
i = int(inp.get_shape()[-1])
alpha = self.make_var('alpha', shape=(i,))
output = tf.nn.relu(inp) + tf.multiply(alpha, -tf.nn.relu(-inp))
return output
@layer
def max_pool(self, inp, k_h, k_w, s_h, s_w, name, padding='SAME'):
self.validate_padding(padding)
return tf.nn.max_pool(inp,
ksize=[1, k_h, k_w, 1],
strides=[1, s_h, s_w, 1],
padding=padding,
name=name)
@layer
def fc(self, inp, num_out, name, relu=True):
with tf.variable_scope(name):
input_shape = inp.get_shape()
if input_shape.ndims == 4:
# The input is spatial. Vectorize it first.
dim = 1
for d in input_shape[1:].as_list():
dim *= int(d)
feed_in = tf.reshape(inp, [-1, dim])
else:
feed_in, dim = (inp, input_shape[-1].value)
weights = self.make_var('weights', shape=[dim, num_out])
biases = self.make_var('biases', [num_out])
op = tf.nn.relu_layer if relu else tf.nn.xw_plus_b
fc = op(feed_in, weights, biases, name=name)
return fc
@layer
def softmax(self, target, axis, name=None):
max_axis = tf.reduce_max(target, axis, keep_dims=True)
target_exp = tf.exp(target - max_axis)
normalize = tf.reduce_sum(target_exp, axis, keep_dims=True)
softmax = tf.div(target_exp, normalize, name)
return softmax
class PNet(Network):
def setup(self):
(self.feed('data')
.conv(3, 3, 10, 1, 1, padding='VALID', relu=False, name='conv1')
.prelu(name='PReLU1')
.max_pool(2, 2, 2, 2, name='pool1')
.conv(3, 3, 16, 1, 1, padding='VALID', relu=False, name='conv2')
.prelu(name='PReLU2')
.conv(3, 3, 32, 1, 1, padding='VALID', relu=False, name='conv3')
.prelu(name='PReLU3')
.conv(1, 1, 2, 1, 1, relu=False, name='conv4-1')
.softmax(3, name='prob1'))
(self.feed('PReLU3')
.conv(1, 1, 4, 1, 1, relu=False, name='conv4-2'))
class RNet(Network):
def setup(self):
(self.feed('data')
.conv(3, 3, 28, 1, 1, padding='VALID', relu=False, name='conv1')
.prelu(name='prelu1')
.max_pool(3, 3, 2, 2, name='pool1')
.conv(3, 3, 48, 1, 1, padding='VALID', relu=False, name='conv2')
.prelu(name='prelu2')
.max_pool(3, 3, 2, 2, padding='VALID', name='pool2')
.conv(2, 2, 64, 1, 1, padding='VALID', relu=False, name='conv3')
.prelu(name='prelu3')
.fc(128, relu=False, name='conv4')
.prelu(name='prelu4')
.fc(2, relu=False, name='conv5-1')
.softmax(1, name='prob1'))
(self.feed('prelu4')
.fc(4, relu=False, name='conv5-2'))
class ONet(Network):
def setup(self):
(self.feed('data')
.conv(3, 3, 32, 1, 1, padding='VALID', relu=False, name='conv1')
.prelu(name='prelu1')
.max_pool(3, 3, 2, 2, name='pool1')
.conv(3, 3, 64, 1, 1, padding='VALID', relu=False, name='conv2')
.prelu(name='prelu2')
.max_pool(3, 3, 2, 2, padding='VALID', name='pool2')
.conv(3, 3, 64, 1, 1, padding='VALID', relu=False, name='conv3')
.prelu(name='prelu3')
.max_pool(2, 2, 2, 2, name='pool3')
.conv(2, 2, 128, 1, 1, padding='VALID', relu=False, name='conv4')
.prelu(name='prelu4')
.fc(256, relu=False, name='conv5')
.prelu(name='prelu5')
.fc(2, relu=False, name='conv6-1')
.softmax(1, name='prob1'))
(self.feed('prelu5')
.fc(4, relu=False, name='conv6-2'))
(self.feed('prelu5')
.fc(10, relu=False, name='conv6-3'))
def create_mtcnn(sess, model_path):
if not model_path:
model_path, _ = os.path.split(os.path.realpath(__file__))
with tf.variable_scope('pnet'):
data = tf.placeholder(tf.float32, (None, None, None, 3), 'input')
pnet = PNet({'data': data})
pnet.load(os.path.join(model_path, 'det1.npy'), sess)
with tf.variable_scope('rnet'):
data = tf.placeholder(tf.float32, (None, 24, 24, 3), 'input')
rnet = RNet({'data': data})
rnet.load(os.path.join(model_path, 'det2.npy'), sess)
with tf.variable_scope('onet'):
data = tf.placeholder(tf.float32, (None, 48, 48, 3), 'input')
onet = ONet({'data': data})
onet.load(os.path.join(model_path, 'det3.npy'), sess)
def pnet_fun(img):
return sess.run(('pnet/conv4-2/BiasAdd:0', 'pnet/prob1:0'), feed_dict={'pnet/input:0': img})
def rnet_fun(img):
return sess.run(('rnet/conv5-2/conv5-2:0', 'rnet/prob1:0'), feed_dict={'rnet/input:0': img})
def onet_fun(img):
return sess.run(('onet/conv6-2/conv6-2:0', 'onet/conv6-3/conv6-3:0', 'onet/prob1:0'), feed_dict={'onet/input:0': img})
return pnet_fun, rnet_fun, onet_fun
def detect_face(img, pnet, rnet, onet):
minsize = 20 # minimum size of face
threshold = [0.6, 0.7, 0.7] # three steps's threshold
factor = 0.709 # scale factor
factor_count = 0
total_boxes = np.empty((0, 9))
points = []
h = img.shape[0]
w = img.shape[1]
minl = np.amin([h, w])
m = 12.0 / minsize
minl = minl * m
# creat scale pyramid
scales = []
while minl >= 12:
scales += [m * np.power(factor, factor_count)]
minl = minl * factor
factor_count += 1
# first stage
for j in range(len(scales)):
scale = scales[j]
hs = int(np.ceil(h * scale))
ws = int(np.ceil(w * scale))
im_data = imresample(img, (hs, ws))
im_data = (im_data - 127.5) * 0.0078125
img_x = np.expand_dims(im_data, 0)
img_y = np.transpose(img_x, (0, 2, 1, 3))
out = pnet(img_y)
out0 = np.transpose(out[0], (0, 2, 1, 3))
out1 = np.transpose(out[1], (0, 2, 1, 3))
boxes, _ = generateBoundingBox(out1[0, :, :, 1].copy(), out0[0, :, :, :].copy(), scale, threshold[0])
# inter-scale nms
pick = nms(boxes.copy(), 0.5, 'Union')
if boxes.size > 0 and pick.size > 0:
boxes = boxes[pick, :]
total_boxes = np.append(total_boxes, boxes, axis=0)
numbox = total_boxes.shape[0]
if numbox > 0:
pick = nms(total_boxes.copy(), 0.7, 'Union')
total_boxes = total_boxes[pick, :]
regw = total_boxes[:, 2] - total_boxes[:, 0]
regh = total_boxes[:, 3] - total_boxes[:, 1]
qq1 = total_boxes[:, 0] + total_boxes[:, 5] * regw
qq2 = total_boxes[:, 1] + total_boxes[:, 6] * regh
qq3 = total_boxes[:, 2] + total_boxes[:, 7] * regw
qq4 = total_boxes[:, 3] + total_boxes[:, 8] * regh
total_boxes = np.transpose(np.vstack([qq1, qq2, qq3, qq4, total_boxes[:, 4]]))
total_boxes = rerec(total_boxes.copy())
total_boxes[:, 0:4] = np.fix(total_boxes[:, 0:4]).astype(np.int32)
dy, edy, dx, edx, y, ey, x, ex, tmpw, tmph = pad(total_boxes.copy(), w, h)
numbox = total_boxes.shape[0]
if numbox > 0:
# second stage
tempimg = np.zeros((24, 24, 3, numbox))
for k in range(0, numbox):
tmp = np.zeros((int(tmph[k]), int(tmpw[k]), 3))
tmp[dy[k] - 1:edy[k], dx[k] - 1:edx[k], :] = img[y[k] - 1:ey[k], x[k] - 1:ex[k], :]
if tmp.shape[0] > 0 and tmp.shape[1] > 0 or tmp.shape[0] == 0 and tmp.shape[1] == 0:
tempimg[:, :, :, k] = imresample(tmp, (24, 24))
else:
return np.empty()
tempimg = (tempimg - 127.5) * 0.0078125
tempimg1 = np.transpose(tempimg, (3, 1, 0, 2))
out = rnet(tempimg1)
out0 = np.transpose(out[0])
out1 = np.transpose(out[1])
score = out1[1, :]
ipass = np.where(score > threshold[1])
total_boxes = np.hstack([total_boxes[ipass[0], 0:4].copy(), np.expand_dims(score[ipass].copy(), 1)])
mv = out0[:, ipass[0]]
if total_boxes.shape[0] > 0:
pick = nms(total_boxes, 0.7, 'Union')
total_boxes = total_boxes[pick, :]
total_boxes = bbreg(total_boxes.copy(), np.transpose(mv[:, pick]))
total_boxes = rerec(total_boxes.copy())
numbox = total_boxes.shape[0]
if numbox > 0:
# third stage
total_boxes = np.fix(total_boxes).astype(np.int32)
dy, edy, dx, edx, y, ey, x, ex, tmpw, tmph = pad(total_boxes.copy(), w, h)
tempimg = np.zeros((48, 48, 3, numbox))
for k in range(0, numbox):
tmp = np.zeros((int(tmph[k]), int(tmpw[k]), 3))
tmp[dy[k] - 1:edy[k], dx[k] - 1:edx[k], :] = img[y[k] - 1:ey[k], x[k] - 1:ex[k], :]
if tmp.shape[0] > 0 and tmp.shape[1] > 0 or tmp.shape[0] == 0 and tmp.shape[1] == 0:
tempimg[:, :, :, k] = imresample(tmp, (48, 48))
else:
return np.empty()
tempimg = (tempimg - 127.5) * 0.0078125
tempimg1 = np.transpose(tempimg, (3, 1, 0, 2))
out = onet(tempimg1)
out0 = np.transpose(out[0])
out1 = np.transpose(out[1])
out2 = np.transpose(out[2])
score = out2[1, :]
points = out1
ipass = np.where(score > threshold[2])
points = points[:, ipass[0]]
total_boxes = np.hstack([total_boxes[ipass[0], 0:4].copy(), np.expand_dims(score[ipass].copy(), 1)])
mv = out0[:, ipass[0]]
w = total_boxes[:, 2] - total_boxes[:, 0] + 1
h = total_boxes[:, 3] - total_boxes[:, 1] + 1
points[0:5, :] = np.tile(w, (5, 1)) * points[0:5, :] + np.tile(total_boxes[:, 0], (5, 1)) - 1
points[5:10, :] = np.tile(h, (5, 1)) * points[5:10, :] + np.tile(total_boxes[:, 1], (5, 1)) - 1
if total_boxes.shape[0] > 0:
total_boxes = bbreg(total_boxes.copy(), np.transpose(mv))
pick = nms(total_boxes.copy(), 0.7, 'Min')
total_boxes = total_boxes[pick, :]
points = points[:, pick]
return total_boxes, points