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利用Opencv中的Houghline方法进行直线检测—python语言
这是给Python部落翻译的文章,请在这里看原文。
在图像处理中,霍夫变换用来检测任意能够用数学公式表达的形状,即使这个形状被破坏或者有点扭曲。
下面我们将看到利用HoughLine算法来阐述霍夫变化进行直线检测的原理,把此算法应用到特点图像的边缘检测是可取的。边缘检测方法请参考这篇文章–边缘检测。
Houghline算法基础
直线可以表示为y=mx+c,或者以极坐标形式表示为r=xcosθ+ysinθ,其中r是原点到直线的垂直距离,θ是水平轴顺时针方向到垂直线的夹角(这个方向取决于坐标的形式,在OpenCV就是采用这种极坐标形式)。
因此任意的曲线都可以用两个参数(r,θ)表示。
HoughLine算法原理:
上述算法的过程被封装成OpenCV函数cv2.HoughLines(),函数返回(r,θ)的一个数组,其中r的单位为像素,θ的单位为弧度。
# Python program to illustrate HoughLine
# method for line detection
import cv2
import numpy as np
# Reading the required image in
# which operations are to be done.
# Make sure that the image is in the same
# directory in which this python program is
img = cv2.imread('xyz.jpg')
# Convert the img to grayscale
gray = cv2.cvtColor(img,cv2.COLOR_BGR2GRAY)
# Apply edge detection method on the image
edges = cv2.Canny(gray,50,150,apertureSize = 3)
# This returns an array of r and theta values
lines = cv2.HoughLines(edges,1,np.pi/180, 200)
# The below for loop runs till r and theta values
# are in the range of the 2d array
for r,theta in lines[0]:
# Stores the value of cos(theta) in a
a = np.cos(theta)
# Stores the value of sin(theta) in b
b = np.sin(theta)
# x0 stores the value rcos(theta)
x0 = a*r
# y0 stores the value rsin(theta)
y0 = b*r
# x1 stores the rounded off value of (rcos(theta)-1000sin(theta))
x1 = int(x0 + 1000*(-b))
# y1 stores the rounded off value of (rsin(theta)+1000cos(theta))
y1 = int(y0 + 1000*(a))
# x2 stores the rounded off value of (rcos(theta)+1000sin(theta))
x2 = int(x0 - 1000*(-b))
# y2 stores the rounded off value of (rsin(theta)-1000cos(theta))
y2 = int(y0 - 1000*(a))
# cv2.line draws a line in img from the point(x1,y1) to (x2,y2).
# (0,0,255) denotes the colour of the line to be
#drawn. In this case, it is red.
cv2.line(img,(x1,y1), (x2,y2), (0,0,255),2)
# All the changes made in the input image are finally
# written on a new image houghlines.jpg
cv2.imwrite('houghlines3.jpg', img)
函数(cv2.HoughLines(edges, 1, np.pi/180,200))
总结
霍夫变换的应用
文章作者是Pratima Upadhyay,如果你喜欢GeeksforGeeks,并且愿意分享,可以利用contribute.geeksforgeeks.org写文章,然后发送到contribute@geeksforgeeks.org,在GeeksforGeeks中看到自己的文章,帮助更多的Geeks。
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