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answer_45.py
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answer_45.py
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import cv2
import numpy as np
import matplotlib.pyplot as plt
def Canny(img):
# Gray scale
def BGR2GRAY(img):
b = img[:, :, 0].copy()
g = img[:, :, 1].copy()
r = img[:, :, 2].copy()
# Gray scale
out = 0.2126 * r + 0.7152 * g + 0.0722 * b
out = out.astype(np.uint8)
return out
# Gaussian filter for grayscale
def gaussian_filter(img, K_size=3, sigma=1.3):
if len(img.shape) == 3:
H, W, C = img.shape
gray = False
else:
img = np.expand_dims(img, axis=-1)
H, W, C = img.shape
gray = True
## Zero padding
pad = K_size // 2
out = np.zeros([H + pad * 2, W + pad * 2, C], dtype=np.float)
out[pad : pad + H, pad : pad + W] = img.copy().astype(np.float)
## prepare Kernel
K = np.zeros((K_size, K_size), dtype=np.float)
for x in range(-pad, -pad + K_size):
for y in range(-pad, -pad + K_size):
K[y + pad, x + pad] = np.exp( - (x ** 2 + y ** 2) / (2 * sigma * sigma))
#K /= (sigma * np.sqrt(2 * np.pi))
K /= (2 * np.pi * sigma * sigma)
K /= K.sum()
tmp = out.copy()
# filtering
for y in range(H):
for x in range(W):
for c in range(C):
out[pad + y, pad + x, c] = np.sum(K * tmp[y : y + K_size, x : x + K_size, c])
out = np.clip(out, 0, 255)
out = out[pad : pad + H, pad : pad + W]
out = out.astype(np.uint8)
if gray:
out = out[..., 0]
return out
# sobel filter
def sobel_filter(img, K_size=3):
if len(img.shape) == 3:
H, W, C = img.shape
else:
H, W = img.shape
# Zero padding
pad = K_size // 2
out = np.zeros((H + pad * 2, W + pad * 2), dtype=np.float)
out[pad : pad + H, pad : pad + W] = img.copy().astype(np.float)
tmp = out.copy()
out_v = out.copy()
out_h = out.copy()
## Sobel vertical
Kv = [[1., 2., 1.],[0., 0., 0.], [-1., -2., -1.]]
## Sobel horizontal
Kh = [[1., 0., -1.],[2., 0., -2.],[1., 0., -1.]]
# filtering
for y in range(H):
for x in range(W):
out_v[pad + y, pad + x] = np.sum(Kv * (tmp[y : y + K_size, x : x + K_size]))
out_h[pad + y, pad + x] = np.sum(Kh * (tmp[y : y + K_size, x : x + K_size]))
out_v = np.clip(out_v, 0, 255)
out_h = np.clip(out_h, 0, 255)
out_v = out_v[pad : pad + H, pad : pad + W]
out_v = out_v.astype(np.uint8)
out_h = out_h[pad : pad + H, pad : pad + W]
out_h = out_h.astype(np.uint8)
return out_v, out_h
def get_edge_angle(fx, fy):
# get edge strength
edge = np.sqrt(np.power(fx.astype(np.float32), 2) + np.power(fy.astype(np.float32), 2))
edge = np.clip(edge, 0, 255)
fx = np.maximum(fx, 1e-10)
#fx[np.abs(fx) <= 1e-5] = 1e-5
# get edge angle
angle = np.arctan(fy / fx)
return edge, angle
def angle_quantization(angle):
angle = angle / np.pi * 180
angle[angle < -22.5] = 180 + angle[angle < -22.5]
_angle = np.zeros_like(angle, dtype=np.uint8)
_angle[np.where(angle <= 22.5)] = 0
_angle[np.where((angle > 22.5) & (angle <= 67.5))] = 45
_angle[np.where((angle > 67.5) & (angle <= 112.5))] = 90
_angle[np.where((angle > 112.5) & (angle <= 157.5))] = 135
return _angle
def non_maximum_suppression(angle, edge):
H, W = angle.shape
_edge = edge.copy()
for y in range(H):
for x in range(W):
if angle[y, x] == 0:
dx1, dy1, dx2, dy2 = -1, 0, 1, 0
elif angle[y, x] == 45:
dx1, dy1, dx2, dy2 = -1, 1, 1, -1
elif angle[y, x] == 90:
dx1, dy1, dx2, dy2 = 0, -1, 0, 1
elif angle[y, x] == 135:
dx1, dy1, dx2, dy2 = -1, -1, 1, 1
if x == 0:
dx1 = max(dx1, 0)
dx2 = max(dx2, 0)
if x == W-1:
dx1 = min(dx1, 0)
dx2 = min(dx2, 0)
if y == 0:
dy1 = max(dy1, 0)
dy2 = max(dy2, 0)
if y == H-1:
dy1 = min(dy1, 0)
dy2 = min(dy2, 0)
if max(max(edge[y, x], edge[y + dy1, x + dx1]), edge[y + dy2, x + dx2]) != edge[y, x]:
_edge[y, x] = 0
return _edge
def hysterisis(edge, HT=100, LT=30):
H, W = edge.shape
# Histeresis threshold
edge[edge >= HT] = 255
edge[edge <= LT] = 0
_edge = np.zeros((H + 2, W + 2), dtype=np.float32)
_edge[1 : H + 1, 1 : W + 1] = edge
## 8 - Nearest neighbor
nn = np.array(((1., 1., 1.), (1., 0., 1.), (1., 1., 1.)), dtype=np.float32)
for y in range(1, H+2):
for x in range(1, W+2):
if _edge[y, x] < LT or _edge[y, x] > HT:
continue
if np.max(_edge[y-1:y+2, x-1:x+2] * nn) >= HT:
_edge[y, x] = 255
else:
_edge[y, x] = 0
edge = _edge[1:H+1, 1:W+1]
return edge
# grayscale
gray = BGR2GRAY(img)
# gaussian filtering
gaussian = gaussian_filter(gray, K_size=5, sigma=1.4)
# sobel filtering
fy, fx = sobel_filter(gaussian, K_size=3)
# get edge strength, angle
edge, angle = get_edge_angle(fx, fy)
# angle quantization
angle = angle_quantization(angle)
# non maximum suppression
edge = non_maximum_suppression(angle, edge)
# hysterisis threshold
out = hysterisis(edge, 100, 30)
return out
def Hough_Line_step2(edge):
## Voting
def voting(edge):
H, W = edge.shape
drho = 1
dtheta = 1
# get rho max length
rho_max = np.ceil(np.sqrt(H ** 2 + W ** 2)).astype(np.int)
# hough table
hough = np.zeros((rho_max * 2, 180), dtype=np.int)
# get index of edge
ind = np.where(edge == 255)
## hough transformation
for y, x in zip(ind[0], ind[1]):
for theta in range(0, 180, dtheta):
# get polar coordinat4s
t = np.pi / 180 * theta
rho = int(x * np.cos(t) + y * np.sin(t))
# vote
hough[rho + rho_max, theta] += 1
out = hough.astype(np.uint8)
return out
# non maximum suppression
def non_maximum_suppression(hough):
rho_max, _ = hough.shape
## non maximum suppression
for y in range(rho_max):
for x in range(180):
# get 8 nearest neighbor
x1 = max(x-1, 0)
x2 = min(x+2, 180)
y1 = max(y-1, 0)
y2 = min(y+2, rho_max-1)
if np.max(hough[y1:y2, x1:x2]) == hough[y,x] and hough[y, x] != 0:
pass
#hough[y,x] = 255
else:
hough[y,x] = 0
# for hough visualization
# get top-10 x index of hough table
ind_x = np.argsort(hough.ravel())[::-1][:20]
# get y index
ind_y = ind_x.copy()
thetas = ind_x % 180
rhos = ind_y // 180
_hough = np.zeros_like(hough, dtype=np.int)
_hough[rhos, thetas] = 255
return _hough
# voting
hough = voting(edge)
# non maximum suppression
out = non_maximum_suppression(hough)
return out
# Read image
img = cv2.imread("thorino.jpg").astype(np.float32)
# Canny
edge = Canny(img)
# Hough
out = Hough_Line_step2(edge)
out = out.astype(np.uint8)
# Save result
cv2.imwrite("out.jpg", out)
cv2.imshow("result", out)
cv2.waitKey(0)
cv2.destroyAllWindows()