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data_processing.py
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data_processing.py
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import tensorflow as tf
import cv2, os
import numpy as np
from random import shuffle
import copy
#####
#Training setting
BIN, OVERLAP = 2, 0.1
NORM_H, NORM_W = 224, 224
VEHICLES = ['Car', 'Truck', 'Van', 'Tram','Pedestrian','Cyclist']
def compute_anchors(angle):
anchors = []
wedge = 2.*np.pi/BIN
l_index = int(angle/wedge)
r_index = l_index + 1
if (angle - l_index*wedge) < wedge/2 * (1+OVERLAP/2):
anchors.append([l_index, angle - l_index*wedge])
if (r_index*wedge - angle) < wedge/2 * (1+OVERLAP/2):
anchors.append([r_index%BIN, angle - r_index*wedge])
return anchors
def parse_annotation(label_dir, image_dir):
all_objs = []
dims_avg = {key:np.array([0, 0, 0]) for key in VEHICLES}
dims_cnt = {key:0 for key in VEHICLES}
for label_file in sorted(os.listdir(label_dir)):
image_file = label_file.replace('txt', 'png')
for line in open(label_dir + label_file).readlines():
line = line.strip().split(' ')
truncated = np.abs(float(line[1]))
occluded = np.abs(float(line[2]))
if line[0] in VEHICLES and truncated < 0.1 and occluded < 0.1:
new_alpha = float(line[3]) + np.pi/2.
if new_alpha < 0:
new_alpha = new_alpha + 2.*np.pi
new_alpha = new_alpha - int(new_alpha/(2.*np.pi))*(2.*np.pi)
obj = {'name':line[0],
'image':image_file,
'xmin':int(float(line[4])),
'ymin':int(float(line[5])),
'xmax':int(float(line[6])),
'ymax':int(float(line[7])),
'dims':np.array([float(number) for number in line[8:11]]),
'new_alpha': new_alpha
}
dims_avg[obj['name']] = dims_cnt[obj['name']]*dims_avg[obj['name']] + obj['dims']
dims_cnt[obj['name']] += 1
dims_avg[obj['name']] /= dims_cnt[obj['name']]
all_objs.append(obj)
###### flip data
for obj in all_objs:
# Fix dimensions
obj['dims'] = obj['dims'] - dims_avg[obj['name']]
# Fix orientation and confidence for no flip
orientation = np.zeros((BIN,2))
confidence = np.zeros(BIN)
anchors = compute_anchors(obj['new_alpha'])
for anchor in anchors:
orientation[anchor[0]] = np.array([np.cos(anchor[1]), np.sin(anchor[1])])
confidence[anchor[0]] = 1.
confidence = confidence / np.sum(confidence)
obj['orient'] = orientation
obj['conf'] = confidence
# Fix orientation and confidence for flip
orientation = np.zeros((BIN,2))
confidence = np.zeros(BIN)
anchors = compute_anchors(2.*np.pi - obj['new_alpha'])
for anchor in anchors:
orientation[anchor[0]] = np.array([np.cos(anchor[1]), np.sin(anchor[1])])
confidence[anchor[0]] = 1
confidence = confidence / np.sum(confidence)
obj['orient_flipped'] = orientation
obj['conf_flipped'] = confidence
return all_objs
def prepare_input_and_output(image_dir, train_inst):
### Prepare image patch
xmin = train_inst['xmin'] #+ np.random.randint(-MAX_JIT, MAX_JIT+1)
ymin = train_inst['ymin'] #+ np.random.randint(-MAX_JIT, MAX_JIT+1)
xmax = train_inst['xmax'] #+ np.random.randint(-MAX_JIT, MAX_JIT+1)
ymax = train_inst['ymax'] #+ np.random.randint(-MAX_JIT, MAX_JIT+1)
img = cv2.imread(image_dir + train_inst['image'])
img = cv2.cvtColor(img, cv2.COLOR_BGR2RGB)
img = copy.deepcopy(img[ymin:ymax+1,xmin:xmax+1]).astype(np.float32)
# re-color the image
#img += np.random.randint(-2, 3, img.shape).astype('float32')
#t = [np.random.uniform()]
#t += [np.random.uniform()]
#t += [np.random.uniform()]
#t = np.array(t)
#img = img * (1 + t)
#img = img / (255. * 2.)
# flip the image
flip = np.random.binomial(1, .5)
if flip > 0.5: img = cv2.flip(img, 1)
# resize the image to standard size
img = cv2.resize(img, (NORM_H, NORM_W))
img = img - np.array([[[103.939, 116.779, 123.68]]])
#img = img[:,:,::-1]
### Fix orientation and confidence
if flip > 0.5:
return img, train_inst['dims'], train_inst['orient_flipped'], train_inst['conf_flipped']
else:
return img, train_inst['dims'], train_inst['orient'], train_inst['conf']
def data_gen(image_dir, all_objs, batch_size):
num_obj = len(all_objs)
keys = range(num_obj)
np.random.shuffle(keys)
l_bound = 0
r_bound = batch_size if batch_size < num_obj else num_obj
while True:
if l_bound == r_bound:
l_bound = 0
r_bound = batch_size if batch_size < num_obj else num_obj
np.random.shuffle(keys)
currt_inst = 0
x_batch = np.zeros((r_bound - l_bound, 224, 224, 3))
d_batch = np.zeros((r_bound - l_bound, 3))
o_batch = np.zeros((r_bound - l_bound, BIN, 2))
c_batch = np.zeros((r_bound - l_bound, BIN))
for key in keys[l_bound:r_bound]:
# augment input image and fix object's orientation and confidence
image, dimension, orientation, confidence = prepare_input_and_output(image_dir, all_objs[key])
#plt.figure(figsize=(5,5))
#plt.imshow(image/255./2.); plt.show()
#print dimension
#print orientation
#print confidence
x_batch[currt_inst, :] = image
d_batch[currt_inst, :] = dimension
o_batch[currt_inst, :] = orientation
c_batch[currt_inst, :] = confidence
currt_inst += 1
yield x_batch, [d_batch, o_batch, c_batch]
l_bound = r_bound
r_bound = r_bound + batch_size
if r_bound > num_obj: r_bound = num_obj