本文实例为大家分享了Python OpenCV处理图像之滤镜和图像运算的具体代码,供大家参考,具体内容如下
0x01. 滤镜
喜欢自拍的人肯定都知道滤镜了,下面代码尝试使用一些简单的滤镜,包括图片的平滑处理、灰度化、二值化等:
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import cv2.cv as cv
image = cv.LoadImage( 'img/lena.jpg' , cv.CV_LOAD_IMAGE_COLOR) #Load the image
cv.ShowImage( "Original" , image)
grey = cv.CreateImage((image.width ,image.height), 8 , 1 ) #8depth, 1 channel so grayscale
cv.CvtColor(image, grey, cv.CV_RGBA2GRAY) #Convert to gray so act as a filter
cv.ShowImage( 'Greyed' , grey)
# 平滑变换
smoothed = cv.CloneImage(image)
cv.Smooth(image,smoothed,cv.CV_MEDIAN) #Apply a smooth alogrithm with the specified algorithm cv.MEDIAN
cv.ShowImage( "Smoothed" , smoothed)
# 均衡处理
cv.EqualizeHist(grey, grey) #Work only on grayscaled pictures
cv.ShowImage( 'Equalized' , grey)
# 二值化处理
threshold1 = cv.CloneImage(grey)
cv.Threshold(threshold1,threshold1, 100 , 255 , cv.CV_THRESH_BINARY)
cv.ShowImage( "Threshold" , threshold1)
threshold2 = cv.CloneImage(grey)
cv.Threshold(threshold2,threshold2, 100 , 255 , cv.CV_THRESH_OTSU)
cv.ShowImage( "Threshold 2" , threshold2)
element_shape = cv.CV_SHAPE_RECT
pos = 3
element = cv.CreateStructuringElementEx(pos * 2 + 1 , pos * 2 + 1 , pos, pos, element_shape)
cv.Dilate(grey,grey,element, 2 ) #Replace a pixel value with the maximum value of neighboors
#There is others like Erode which replace take the lowest value of the neighborhood
#Note: The Structuring element is optionnal
cv.ShowImage( "Dilated" , grey)
cv.WaitKey( 0 )
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0x02. HighGUI
OpenCV 内建了一套简单的 GUI 工具,方便我们在处理界面上编写一些控件,动态的改变输出:
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import cv2.cv as cv
im = cv.LoadImage( "img/lena.jpg" , cv.CV_LOAD_IMAGE_GRAYSCALE)
thresholded = cv.CreateImage(cv.GetSize(im), 8 , 1 )
def onChange(val):
cv.Threshold(im, thresholded, val, 255 , cv.CV_THRESH_BINARY)
cv.ShowImage( "Image" , thresholded)
# 创建一个滑动条控件
onChange( 100 ) #Call here otherwise at startup. Show nothing until we move the trackbar
cv.CreateTrackbar( "Thresh" , "Image" , 100 , 255 , onChange) #Threshold value arbitrarily set to 100
cv.WaitKey( 0 )
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0x03. 选区操作
有事希望对图像中某一块区域进行变换等操作,就可以使用如下方式:
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import cv2.cv as cv
im = cv.LoadImage( "img/lena.jpg" , 3 )
# 选择一块区域
cv.SetImageROI(im, ( 50 , 50 , 150 , 150 )) #Give the rectangle coordinate of the selected area
# 变换操作
cv.Zero(im)
#cv.Set(im, cv.RGB(100, 100, 100)) put the image to a given value
# 解除选区
cv.ResetImageROI(im) # Reset the ROI
cv.ShowImage( "Image" ,im)
cv.WaitKey( 0 )
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0x04. 运算
对于多张图片,我们可以进行一些运算操作(包括算数运算和逻辑运算),下面的代码将演示一些基本的运算操作:
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import cv2.cv as cv #or simply import cv
im = cv.LoadImage( "img/lena.jpg" )
im2 = cv.LoadImage( "img/fruits-larger.jpg" )
cv.ShowImage( "Image1" , im)
cv.ShowImage( "Image2" , im2)
res = cv.CreateImage(cv.GetSize(im2), 8 , 3 )
# 加
cv.Add(im, im2, res) #Add every pixels together (black is 0 so low change and white overload anyway)
cv.ShowImage( "Add" , res)
# 减
cv.AbsDiff(im, im2, res) # Like minus for each pixel im(i) - im2(i)
cv.ShowImage( "AbsDiff" , res)
# 乘
cv.Mul(im, im2, res) #Multiplie each pixels (almost white)
cv.ShowImage( "Mult" , res)
# 除
cv.Div(im, im2, res) #Values will be low so the image will likely to be almost black
cv.ShowImage( "Div" , res)
# 与
cv.And(im, im2, res) #Bit and for every pixels
cv.ShowImage( "And" , res)
# 或
cv.Or(im, im2, res) # Bit or for every pixels
cv.ShowImage( "Or" , res)
# 非
cv.Not(im, res) # Bit not of an image
cv.ShowImage( "Not" , res)
# 异或
cv.Xor(im, im2, res) #Bit Xor
cv.ShowImage( "Xor" , res)
# 乘方
cv. Pow (im, res, 2 ) #Pow the each pixel with the given value
cv.ShowImage( "Pow" , res)
# 最大值
cv. Max (im, im2, res) #Maximum between two pixels
#Same form Min MinS
cv.ShowImage( "Max" ,res)
cv.WaitKey( 0 )
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以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持服务器之家。
原文链接:https://blog.csdn.net/qq_26898461/article/details/50454515