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utils.py
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utils.py
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import math
import cv2
import numpy as np
import os
from math import *
import numpy as np
import sys
UV_SCALE = 0.75
def set_target_gpu(gpus):
os.environ['CUDA_VISIBLE_DEVICES'] = ','.join(map(str, gpus))
def angular_error(estimation, ground_truth):
return acos(
np.clip(
np.dot(estimation, ground_truth) / np.linalg.norm(estimation) /
np.linalg.norm(ground_truth), -1, 1))
def summary_angular_errors(errors):
errors = sorted(errors)
def g(f):
return np.percentile(errors, f * 100)
median = g(0.5)
mean = np.mean(errors)
trimean = 0.25 * (g(0.25) + 2 * g(0.5) + g(0.75))
results = {
'25': np.mean(errors[:int(0.25 * len(errors))]),
'75': np.mean(errors[int(0.75 * len(errors)):]),
'95': g(0.95),
'tri': trimean,
'med': median,
'mean': mean
}
return results
def just_print_angular_errors(results):
print "25: %5.3f," % results['25'],
print "med: %5.3f" % results['med'],
print "tri: %5.3f" % results['tri'],
print "avg: %5.3f" % results['mean'],
print "75: %5.3f" % results['75'],
print "95: %5.3f" % results['95']
def print_angular_errors(errors):
print "%d images tested. Results:" % len(errors)
results = summary_angular_errors(errors)
just_print_angular_errors(results)
return results
class LowestTrigger:
def __init__(self):
self.minimum = None
def push(self, value):
if self.minimum is None or value < self.minimum:
self.minimum = value
return True
return False
def rotate_image(image, angle):
"""
Rotates an OpenCV 2 / NumPy image about it's centre by the given angle
(in degrees). The returned image will be large enough to hold the entire
new image, with a black background
"""
# Get the image size
# No that's not an error - NumPy stores image matricies backwards
image_size = (image.shape[1], image.shape[0])
image_center = tuple(np.array(image_size) / 2)
# Convert the OpenCV 3x2 rotation matrix to 3x3
rot_mat = np.vstack(
[cv2.getRotationMatrix2D(image_center, angle, 1.0), [0, 0, 1]])
rot_mat_notranslate = np.matrix(rot_mat[0:2, 0:2])
# Shorthand for below calcs
image_w2 = image_size[0] * 0.5
image_h2 = image_size[1] * 0.5
# Obtain the rotated coordinates of the image corners
rotated_coords = [
(np.array([-image_w2, image_h2]) * rot_mat_notranslate).A[0],
(np.array([image_w2, image_h2]) * rot_mat_notranslate).A[0],
(np.array([-image_w2, -image_h2]) * rot_mat_notranslate).A[0],
(np.array([image_w2, -image_h2]) * rot_mat_notranslate).A[0]
]
# Find the size of the new image
x_coords = [pt[0] for pt in rotated_coords]
x_pos = [x for x in x_coords if x > 0]
x_neg = [x for x in x_coords if x < 0]
y_coords = [pt[1] for pt in rotated_coords]
y_pos = [y for y in y_coords if y > 0]
y_neg = [y for y in y_coords if y < 0]
right_bound = max(x_pos)
left_bound = min(x_neg)
top_bound = max(y_pos)
bot_bound = min(y_neg)
new_w = int(abs(right_bound - left_bound))
new_h = int(abs(top_bound - bot_bound))
# We require a translation matrix to keep the image centred
trans_mat = np.matrix([[1, 0, int(new_w * 0.5 - image_w2)],
[0, 1, int(new_h * 0.5 - image_h2)], [0, 0, 1]])
# Compute the tranform for the combined rotation and translation
affine_mat = (np.matrix(trans_mat) * np.matrix(rot_mat))[0:2, :]
# Apply the transform
result = cv2.warpAffine(
image, affine_mat, (new_w, new_h), flags=cv2.INTER_LINEAR)
return result
def largest_rotated_rect(w, h, angle):
"""
Given a rectangle of size wxh that has been rotated by 'angle' (in
radians), computes the width and height of the largest possible
axis-aligned rectangle within the rotated rectangle.
Original JS code by 'Andri' and Magnus Hoff from Stack Overflow
Converted to Python by Aaron Snoswell
"""
quadrant = int(math.floor(angle / (math.pi / 2))) & 3
sign_alpha = angle if ((quadrant & 1) == 0) else math.pi - angle
alpha = (sign_alpha % math.pi + math.pi) % math.pi
bb_w = w * math.cos(alpha) + h * math.sin(alpha)
bb_h = w * math.sin(alpha) + h * math.cos(alpha)
gamma = math.atan2(bb_w, bb_w) if (w < h) else math.atan2(bb_w, bb_w)
delta = math.pi - alpha - gamma
length = h if (w < h) else w
d = length * math.cos(alpha)
a = d * math.sin(alpha) / math.sin(delta)
y = a * math.cos(gamma)
x = y * math.tan(gamma)
return (bb_w - 2 * x, bb_h - 2 * y)
def crop_around_center(image, width, height):
"""
Given a NumPy / OpenCV 2 image, crops it to the given width and height,
around it's centre point
"""
image_size = (image.shape[1], image.shape[0])
image_center = (int(image_size[0] * 0.5), int(image_size[1] * 0.5))
if (width > image_size[0]):
width = image_size[0]
if (height > image_size[1]):
height = image_size[1]
x1 = int(image_center[0] - width * 0.5)
x2 = int(image_center[0] + width * 0.5)
y1 = int(image_center[1] - height * 0.5)
y2 = int(image_center[1] + height * 0.5)
return image[y1:y2, x1:x2]
def rotate_and_crop(image, angle):
image_width, image_height = image.shape[:2]
image_rotated = rotate_image(image, angle)
image_rotated_cropped = crop_around_center(image_rotated,
*largest_rotated_rect(
image_width, image_height,
math.radians(angle)))
return image_rotated_cropped
class Tee(object):
def __init__(self, name):
self.file = open(name, 'w')
self.stdout = sys.stdout
self.stderr = sys.stderr
sys.stdout = self
sys.stderr = self
def __del__(self):
self.file.close()
def write(self, data):
self.file.write(data)
self.stdout.write(data)
self.file.flush()
self.stdout.flush()
def write_to_file(self, data):
self.file.write(data)
def hdr2ldr(raw):
return (np.clip(np.power(raw / (
raw.max() * 0.5), 1 / 2.2), 0, 1) * 255).astype(np.uint8)
def bgr2uvl(raw):
u = np.log(raw[:, :, 2] / raw[:, :, 1])
v = np.log(raw[:, :, 0] / raw[:, :, 1])
l = np.log(0.2126 * raw[:, :, 2] + 0.7152 * raw[:, :, 1] +
0.0722 * raw[:, :, 0])
l = (l - l.mean()) * 0.3 + 0.5
u = u * UV_SCALE + 0.5
v = v * UV_SCALE + 0.5
uvl = np.stack([u, v, l], axis=2)
uvl = (np.clip(uvl, 0, 1) * 255).astype(np.uint8)
return uvl
def bgr2nrgb(raw):
rgb = raw / np.maximum(1e-4, np.linalg.norm(raw, axis=2, keepdims=True))
return (np.clip(rgb, 0, 1) * 255).astype(np.uint8)
def get_WB_image(img, illum):
return img / illum[::-1]
def slice_list(l, fractions):
sliced = []
for i in range(len(fractions)):
total_fraction = sum(fractions)
start = int(round(1.0 * len(l) * sum(fractions[:i]) / total_fraction))
end = int(round(1.0 * len(l) * sum(fractions[:i + 1]) / total_fraction))
sliced.append(l[start:end])
return sliced
def get_session():
import tensorflow as tf
config = tf.ConfigProto()
config.gpu_options.allow_growth = True
return tf.Session(config=config)