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目录概述对象测量多边形拟合计算对象中心【OpenCV】⚠️高手勿入! 半小时学会基本操作 ⚠️ 对象测量 概述 OpenCV 是一
【OpenCV】⚠️高手勿入! 半小时学会基本操作 ⚠️ 对象测量
OpenCV 是一个跨平台的计算机视觉库, 支持多语言, 功能强大. 今天小白就带大家一起携手走进 OpenCV 的世界.
对象测量可以帮助我们进行矩阵计算:
原点距:
中心距:
图像重心坐标:
步骤:
格式:
cv2.approxPolyDP(curve, epsilon, closed, approxCurve=None)
参数:
代码:
import cv2
from matplotlib import pyplot as plt
# 读取图片
image = cv2.imread("polyGon.jpg")
image_gray = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY)
# 二值化
ret, thresh = cv2.threshold(image_gray, 127, 255, cv2.THRESH_OTSU)
# 计算轮廓
contours, hierarchy = cv2.findContours(thresh, cv2.RETR_TREE, cv2.CHaiN_APPROX_NONE)
# 轮廓近似
perimeter = cv2.arcLength(contours[0], True)
approx = cv2.approxPolyDP(contours[0], perimeter * 0.1, True)
# 绘制轮廓
result1 = cv2.drawContours(image.copy(), contours, 0, (0, 0, 255), 2)
result2 = cv2.drawContours(image.copy(), [approx], -1, (0, 0, 255), 2)
# 图片展示
f, ax = plt.subplots(1, 2, figsize=(12, 8))
# 子图
ax[0].imshow(cv2.cvtColor(result1, cv2.COLOR_BGR2RGB))
ax[1].imshow(cv2.cvtColor(result2, cv2.COLOR_BGR2RGB))
# 标题
ax[0].set_title("contour")
ax[1].set_title("approx")
plt.show()
输出结果:
cv2.moments()
可以帮助我们得到轮距, 从而进一步计算图片对象的中心.
格式:
cv2.moments(array, binaryImage=None)
参数:
例 1:
import numpy as np
import cv2
# 读取图片
image = cv2.imread("shape.jpg")
image_gray = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY)
# 二值化
ret, thresh = cv2.threshold(image_gray, 0, 255, cv2.THRESH_OTSU)
# 获取轮廓
contours, hierarchy = cv2.findContours(thresh, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
# 遍历每个轮廓
for i, contour in enumerate(contours):
# 面积
area = cv2.contourArea(contour)
# 外接矩形
x, y, w, h = cv2.boundingRect(contour)
# 获取论距
mm = cv2.moments(contour)
print(mm, type(mm)) # 调试输出 (字典类型)
# 获取中心
cx = mm["m10"] / mm["m00"]
cy = mm["m01"] / mm["m00"]
# 获取
cv2.circle(image, (np.int(cx), np.int(cy)), 3, (0, 255, 255), -1)
cv2.rectangle(image, (x, y), (x + w, y + h), (0, 0, 255), 2)
# 图片展示
cv2.imshow("result", image)
cv2.waiTKEy(0)
cv2.destroyAllwindows()
# 保存图片
cv2.imwrite("result1.jpg", image)
输出结果:
{'m00': 8500.5, 'm10': 1027805.8333333333, 'm01': 2991483.6666666665, 'm20': 131713199.41666666, 'm11': 365693040.4583333, 'm02': 1061366842.5833333, 'm30': 17848380183.95, 'm21': 47383693552.933334, 'm12': 131067057115.4, 'm03': 379419590249.80005, 'mu20': 7439941.251379013, 'mu11': 3989097.993609071, 'mu02': 8608236.862088203, 'mu30': 123631672.32175827, 'mu21': 66721478.995661736, 'mu12': -71778847.06811166, 'mu03': -153890589.33666992, 'nu20': 0.10296285178405724, 'nu11': 0.05520593397050295, 'nu02': 0.11913113104071384, 'nu30': 0.01855746134472764, 'nu21': 0.010015081443714638, 'nu12': -0.010774206599494254, 'nu03': -0.023099409797678556} <class 'dict'>
{'m00': 15986.0, 'm10': 6026846.0, 'm01': 5179910.0, 'm20': 2292703160.333333, 'm11': 1952864629.0, 'm02': 1698884573.6666665, 'm30': 879850714149.0, 'm21': 742898718990.0, 'm12': 640491821107.3334, 'm03': 563738081200.0, 'mu20': 20535469.371490955, 'mu11': -1620.4595272541046, 'mu02': 20449217.223528624, 'mu30': -223791.80407714844, 'mu21': 151823.5922050476, 'mu12': 209097.09715557098, 'mu03': -152351.75524902344, 'nu20': 0.08035724088041474, 'nu11': -6.34101194440178e-06, 'nu02': 0.08001972803837157, 'nu30': -6.926194062792776e-06, 'nu21': 4.698830090131295e-06, 'nu12': 6.471403538830498e-06, 'nu03': -4.715176353366703e-06} <class 'dict'>
{'m00': 11396.0, 'm10': 6176598.0, 'm01': 2597707.833333333, 'm20': 3349665027.0, 'm11': 1407949570.5833333, 'm02': 655725464.8333333, 'm30': 1817641012813.0, 'm21': 763562731879.1167, 'm12': 355401284084.75, 'm03': 178062030454.85, 'mu20': 1967338.8985610008, 'mu11': -324.81426215171814, 'mu02': 63580327.29723644, 'mu30': -21712.3154296875, 'mu21': 9988180.769364119, 'mu12': 186586.19526672363, 'mu03': -396148296.0755005, 'nu20': 0.015148662774911266, 'nu11': -2.501095121647356e-06, 'nu02': 0.48957347310563326, 'nu30': -1.5661200090835562e-06, 'nu21': 0.0007204523998327835, 'nu12': 1.3458554191159022e-05, 'nu03': -0.028574371768747265} <class 'dict'>
{'m00': 11560.0, 'm10': 4184863.0, 'm01': 1485772.0, 'm20': 1524366924.3333333, 'm11': 537875136.1666666, 'm02': 203000229.0, 'm30': 558641678337.5, 'm21': 195927630288.0, 'm12': 73490515262.5, 'm03': 29185458885.0, 'mu20': 9394750.564388752, 'mu11': 7292.807151079178, 'mu02': 12038426.579238743, 'mu30': -36898.54187011719, 'mu21': 58255.2828142643, 'mu12': 46557.39966964722, 'mu03': -74896.38109207153, 'nu20': 0.07030230843432154, 'nu11': 5.457315488828541e-05, 'nu02': 0.0900853271874644, 'nu30': -2.568115896721007e-06, 'nu21': 4.0545319755426715e-06, 'nu12': 3.2403664790463073e-06, 'nu03': -5.21274221530133e-06} <class 'dict'>
{'m00': 7136.5, 'm10': 931499.3333333333, 'm01': 837811.3333333333, 'm20': 126603461.91666666, 'm11': 109342970.95833333, 'm02': 104031211.58333333, 'm30': 17834967892.7, 'm21': 14861464047.05, 'm12': 13575875235.816666, 'm03': 13540680151.900002, 'mu20': 5018510.189567342, 'mu11': -13253.86603589356, 'mu02': 5673777.230110094, 'mu30': -177930.16611862183, 'mu21': 1921792.6864708662, 'mu12': 201480.14046394825, 'mu03': -4564410.182851791, 'nu20': 0.09853811951621429, 'nu11': -0.00026023879322029775, 'nu02': 0.11140424502299628, 'nu30': -4.135579833554871e-05, 'nu21': 0.00044667676380089435, 'nu12': 4.682945134828951e-05, 'nu03': -0.0010608927713634498} <class 'dict'>
例 2:
import numpy as np
import cv2
# 读取图片
image = cv2.imread("shape.jpg")
image_gray = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY)
# 二值化
ret, thresh = cv2.threshold(image_gray, 0, 255, cv2.THRESH_OTSU)
# 获取轮廓
contours, hierarchy = cv2.findContours(thresh, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
# 遍历每个轮廓
for i, contour in enumerate(contours):
# 面积
area = cv2.contourArea(contour)
# 外接矩形
x, y, w, h = cv2.boundingRect(contour)
# 获取论距
mm = cv2.moments(contour)
# 获取中心
cx = mm["m10"] / mm["m00"]
cy = mm["m01"] / mm["m00"]
# 获取
cv2.circle(image, (np.int(cx), np.int(cy)), 3, (0, 255, 255), -1)
cv2.rectangle(image, (x, y), (x + w, y + h), (0, 0, 255), 2)
# 多变形拟合
approxCurve = cv2.approxPolyDP(contour, 4, True)
print(approxCurve.shape)
# 圆圈
if approxCurve.shape[0] > 10:
cv2.drawContours(image, contours, i, (0, 255, 0), 2) # 绿色
# 4-10边形
if 10 >= approxCurve.shape[0] > 3:
cv2.drawContours(image, contours, i, (240, 32, 160), 2) # 紫色
# 三角形
if approxCurve.shape[0] == 3:
cv2.drawContours(image, contours, i, (250, 206, 135), 2) # 蓝色
# 图片展示
cv2.imshow("result", image)
cv2.waitKey(0)
cv2.destroyAllWindows()
# 保存图片
cv2.imwrite("result2.jpg", image)
输出结果:
(3, 1, 2)
(6, 1, 2)
(7, 1, 2)
(16, 1, 2)
(10, 1, 2)
到此这篇关于OpenCV半小时掌握基本操作之对象测量的文章就介绍到这了,更多相关OpenCV对象测量内容请搜索编程网以前的文章或继续浏览下面的相关文章希望大家以后多多支持编程网!
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本文标题: OpenCV半小时掌握基本操作之对象测量
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