本文实例为大家分享了Python OpenCV图像直方图和反向投影的具体代码,供大家参考,具体内容如下
当我们想比较两张图片相似度的时候,可以使用这一节提到的技术
关于这两种技术的原理可以参考我上面贴的链接,下面是示例的代码:
0x01. 绘制直方图
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import cv2.cv as cv
def drawGraph(ar,im, size): #Draw the histogram on the image
minV, maxV, minloc, maxloc = cv.MinMaxLoc(ar) #Get the min and max value
hpt = 0.9 * histsize
for i in range (size):
intensity = ar[i] * hpt / maxV #Calculate the intensity to make enter in the image
cv.Line(im, (i,size), (i, int (size - intensity)),cv.Scalar( 255 , 255 , 255 )) #Draw the line
i + = 1
#---- Gray image
orig = cv.LoadImage( "img/lena.jpg" , cv.CV_8U)
histsize = 256 #Because we are working on grayscale pictures which values within 0-255
hist = cv.CreateHist([histsize], cv.CV_HIST_ARRAY, [[ 0 ,histsize]], 1 )
cv.CalcHist([orig], hist) #Calculate histogram for the given grayscale picture
histImg = cv.CreateMat(histsize, histsize, cv.CV_8U) #Image that will contain the graph of the repartition of values
drawGraph(hist.bins, histImg, histsize)
cv.ShowImage( "Original Image" , orig)
cv.ShowImage( "Original Histogram" , histImg)
#---------------------
#---- Equalized image
imEq = cv.CloneImage(orig)
cv.EqualizeHist(imEq, imEq) #Equlize the original image
histEq = cv.CreateHist([histsize], cv.CV_HIST_ARRAY, [[ 0 ,histsize]], 1 )
cv.CalcHist([imEq], histEq) #Calculate histogram for the given grayscale picture
eqImg = cv.CreateMat(histsize, histsize, cv.CV_8U) #Image that will contain the graph of the repartition of values
drawGraph(histEq.bins, eqImg, histsize)
cv.ShowImage( "Image Equalized" , imEq)
cv.ShowImage( "Equalized HIstogram" , eqImg)
#--------------------------------
cv.WaitKey( 0 )
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0x02. 反向投影
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import cv2.cv as cv
im = cv.LoadImage( "img/lena.jpg" , cv.CV_8U)
cv.SetImageROI(im, ( 1 , 1 , 30 , 30 ))
histsize = 256 #Because we are working on grayscale pictures
hist = cv.CreateHist([histsize], cv.CV_HIST_ARRAY, [[ 0 ,histsize]], 1 )
cv.CalcHist([im], hist)
cv.NormalizeHist(hist, 1 ) # The factor rescale values by multiplying values by the factor
_,max_value,_,_ = cv.GetMinMaxHistValue(hist)
if max_value = = 0 :
max_value = 1.0
cv.NormalizeHist(hist, 256 / max_value)
cv.ResetImageROI(im)
res = cv.CreateMat(im.height, im.width, cv.CV_8U)
cv.CalcBackProject([im], res, hist)
cv.Rectangle(im, ( 1 , 1 ), ( 30 , 30 ), ( 0 , 0 , 255 ), 2 , cv.CV_FILLED)
cv.ShowImage( "Original Image" , im)
cv.ShowImage( "BackProjected" , 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/50454528