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deteccao_dicionario_aruco.py
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deteccao_dicionario_aruco.py
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import cv2
### Descição ###
# Este código detecta o dicionário aruco em uma imagem utilizado para dar origem
# ao aruco. Ele está baseado no seguinte tutorial:
# https://pyimagesearch.com/2020/12/28/determining-aruco-marker-type-with-opencv-and-python/
# define names of each possible ArUco tag OpenCV supports
ARUCO_DICT = {
"DICT_4X4_50": cv2.aruco.DICT_4X4_50,
"DICT_4X4_100": cv2.aruco.DICT_4X4_100,
"DICT_4X4_250": cv2.aruco.DICT_4X4_250,
"DICT_4X4_1000": cv2.aruco.DICT_4X4_1000,
"DICT_5X5_50": cv2.aruco.DICT_5X5_50,
"DICT_5X5_100": cv2.aruco.DICT_5X5_100,
"DICT_5X5_250": cv2.aruco.DICT_5X5_250,
"DICT_5X5_1000": cv2.aruco.DICT_5X5_1000,
"DICT_6X6_50": cv2.aruco.DICT_6X6_50,
"DICT_6X6_100": cv2.aruco.DICT_6X6_100,
"DICT_6X6_250": cv2.aruco.DICT_6X6_250,
"DICT_6X6_1000": cv2.aruco.DICT_6X6_1000,
"DICT_7X7_50": cv2.aruco.DICT_7X7_50,
"DICT_7X7_100": cv2.aruco.DICT_7X7_100,
"DICT_7X7_250": cv2.aruco.DICT_7X7_250,
"DICT_7X7_1000": cv2.aruco.DICT_7X7_1000,
"DICT_ARUCO_ORIGINAL": cv2.aruco.DICT_ARUCO_ORIGINAL,
"DICT_APRILTAG_16h5": cv2.aruco.DICT_APRILTAG_16h5,
"DICT_APRILTAG_25h9": cv2.aruco.DICT_APRILTAG_25h9,
"DICT_APRILTAG_36h10": cv2.aruco.DICT_APRILTAG_36h10,
"DICT_APRILTAG_36h11": cv2.aruco.DICT_APRILTAG_36h11
}
# resize the image
def resize(image, width=None, height=None, inter=cv2.INTER_AREA):
# initialize the dimensions of the image to be resized and
# grab the image size
dim = None
(h, w) = image.shape[:2]
# if both the width and height are None, then return the
# original image
if width is None and height is None:
return image
# check to see if the width is None
if width is None:
# calculate the ratio of the height and construct the
# dimensions
r = height / float(h)
dim = (int(w * r), height)
# otherwise, the height is None
else:
# calculate the ratio of the width and construct the
# dimensions
r = width / float(w)
dim = (width, int(h * r))
# resize the image
resized = cv2.resize(image, dim, interpolation=inter)
# return the resized image
return resized
# load the input image from disk and resize it
print("[INFO] loading image...")
image = cv2.imread("aruco.jpeg")
image = resize(image, width=600)
# loop over the types of ArUco dictionaries
for (arucoName, arucoDict) in ARUCO_DICT.items():
# load the ArUCo dictionary, grab the ArUCo parameters, and
# attempt to detect the markers for the current dictionary
arucoDict = cv2.aruco.Dictionary_get(arucoDict)
arucoParams = cv2.aruco.DetectorParameters_create()
(corners, ids, rejected) = cv2.aruco.detectMarkers(
image, arucoDict, parameters=arucoParams)
# if at least one ArUco marker was detected display the ArUco
# name to our terminal
if len(corners) > 0:
print("[INFO] detected {} markers for '{}'".format(
len(corners), arucoName))