问题
I have 2 contours (cont1
and cont2
) received from cv2.findContours()
. How do I know if they intersect or not? I don't need coordinates, I only need a boolean True
or False
.
I have attempted different ways and already tried to do a check with
if ((cont1 & cont2).area() > 0):
... but got the error that the array has no method "Area()"
...
cont1array = cv2.findContours(binary1, cv2.RETR_LIST, cv2.CHAIN_APPROX_SIMPLE)[0]
cont2array = cv2.findContours(binary2, cv2.RETR_LIST, cv2.CHAIN_APPROX_SIMPLE)[0]
...
for cont1 in cont1array:
for cont2 in cont2array:
print("cont1")
print(cont1)
print(type(cont1))
print("cont2")
print(cont2)
print(type(cont2))
> if cont1 and cont2 intersect: #i dont know how check intersect
print("yes they intersect")
else:
print("no they do not intersect")
# cont1
# [[172 302]
# [261 301]
# [262 390]
# [173 391]]
# <class 'numpy.ndarray'>
# cont2
# [[ 0 0]
# [ 0 699]
# [499 699]
# [499 0]]
# <class 'numpy.ndarray'>
回答1:
Once you have the two contours from cv2.findContours()
, you can use a bitwise AND
operation to detect intersection. Specifically, we can use np.logical_and(). The idea is to create two separate images for each contour and then use the logical AND
operation on them. Any points that have a positive value (1
or True
) will be points of intersection. So since you're only looking to obtain a boolean value of whether there is intersection, we can check the intersected image to see if there is a single positive value. Essentially, if the entire array is False
then there was no intersection between the contours. But if there is a single True
, then the contours touched and thus intersect.
def contourIntersect(original_image, contour1, contour2):
# Two separate contours trying to check intersection on
contours = [contour1, contour2]
# Create image filled with zeros the same size of original image
blank = np.zeros(original_image.shape[0:2])
# Copy each contour into its own image and fill it with '1'
image1 = cv2.drawContours(blank.copy(), contours, 0, 1)
image2 = cv2.drawContours(blank.copy(), contours, 1, 1)
# Use the logical AND operation on the two images
# Since the two images had bitwise and applied to it,
# there should be a '1' or 'True' where there was intersection
# and a '0' or 'False' where it didnt intersect
intersection = np.logical_and(image1, image2)
# Check if there was a '1' in the intersection
return intersection.any()
Example
Original Image
Detected Contour
We now pass the two detected contours to the function and obtain this intersection array:
[[False False False ... False False False]
[False False False ... False False False]
[False False False ... False False False]
...
[False False False ... False False False]
[False False False ... False False False]
[False False False ... False False False]]
We check the intersection
array to see if True
exists. We will obtain a True
or 1
where the contours intersect and False
or 0
where they do not.
return intersection.any()
Thus we obtain
False
Full code
import cv2
import numpy as np
def contourIntersect(original_image, contour1, contour2):
# Two separate contours trying to check intersection on
contours = [contour1, contour2]
# Create image filled with zeros the same size of original image
blank = np.zeros(original_image.shape[0:2])
# Copy each contour into its own image and fill it with '1'
image1 = cv2.drawContours(blank.copy(), contours, 0, 1)
image2 = cv2.drawContours(blank.copy(), contours, 1, 1)
# Use the logical AND operation on the two images
# Since the two images had bitwise AND applied to it,
# there should be a '1' or 'True' where there was intersection
# and a '0' or 'False' where it didnt intersect
intersection = np.logical_and(image1, image2)
# Check if there was a '1' in the intersection array
return intersection.any()
original_image = cv2.imread("base.png")
image = original_image.copy()
cv2.imshow("original", image)
gray = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY)
cv2.imshow("gray", gray)
blurred = cv2.GaussianBlur(gray, (5,5), 0)
cv2.imshow("blur", blurred)
threshold = cv2.threshold(blurred, 60, 255, cv2.THRESH_BINARY)[1]
cv2.imshow("thresh", threshold)
contours = cv2.findContours(threshold.copy(), cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
# Depending on OpenCV version, number of arguments return by cv.findContours
# is either 2 or 3
contours = contours[1] if len(contours) == 3 else contours[0]
contour_list = []
for c in contours:
contour_list.append(c)
cv2.drawContours(image, [c], 0, (0,255,0), 2)
print(contourIntersect(original_image, contour_list[0], contour_list[1]))
cv2.imshow("contour", image)
cv2.waitKey(0)
来源:https://stackoverflow.com/questions/55641425/check-if-two-contours-intersect