Prev Tutorial: Operations with images
Next Tutorial: Changing the contrast and brightness of an image!
Goal
In this tutorial you will learn:
- what is linear blending and why it is useful;
- how to add two images using addWeighted()
Theory
- Note
- The explanation below belongs to the book Computer Vision: Algorithms and Applications by Richard Szeliski
From our previous tutorial, we know already a bit of Pixel operators. An interesting dyadic (two-input) operator is the linear blend operator:
\[g(x) = (1 - \alpha)f_{0}(x) + \alpha f_{1}(x)\]
By varying \(\alpha\) from \(0 \rightarrow 1\) this operator can be used to perform a temporal cross-dissolve between two images or videos, as seen in slide shows and film productions (cool, eh?)
Source Code
C++
Download the source code from here.
#include <iostream>
using std::cin;
using std::cout;
using std::endl;
int main( void )
{
double alpha = 0.5; double beta; double input;
cout << " Simple Linear Blender " << endl;
cout << "-----------------------" << endl;
cout << "* Enter alpha [0.0-1.0]: ";
cin >> input;
if( input >= 0 && input <= 1 )
{ alpha = input; }
src1 =
imread(
"../data/LinuxLogo.jpg" );
src2 =
imread(
"../data/WindowsLogo.jpg" );
if( src1.
empty() ) { cout <<
"Error loading src1" << endl;
return -1; }
if( src2.
empty() ) { cout <<
"Error loading src2" << endl;
return -1; }
beta = ( 1.0 - alpha );
imshow(
"Linear Blend", dst );
return 0;
}
Java
Download the source code from here.
import org.opencv.core.*;
import org.opencv.highgui.HighGui;
import org.opencv.imgcodecs.Imgcodecs;
import java.util.Locale;
import java.util.Scanner;
class AddingImagesRun{
public void run() {
double alpha = 0.5; double beta; double input;
Mat src1, src2, dst = new Mat();
System.out.println(" Simple Linear Blender ");
System.out.println("-----------------------");
System.out.println("* Enter alpha [0.0-1.0]: ");
Scanner scan = new Scanner( System.in ).useLocale(Locale.US);
input = scan.nextDouble();
if( input >= 0.0 && input <= 1.0 )
alpha = input;
src1 = Imgcodecs.imread("../../images/LinuxLogo.jpg");
src2 = Imgcodecs.imread("../../images/WindowsLogo.jpg");
if( src1.empty() == true ){ System.out.println("Error loading src1"); return;}
if( src2.empty() == true ){ System.out.println("Error loading src2"); return;}
beta = ( 1.0 - alpha );
Core.addWeighted( src1, alpha, src2, beta, 0.0, dst);
HighGui.imshow("Linear Blend", dst);
HighGui.waitKey(0);
System.exit(0);
}
}
public class AddingImages {
public static void main(String[] args) {
System.loadLibrary(Core.NATIVE_LIBRARY_NAME);
new AddingImagesRun().run();
}
}
Python
Download the source code from here.
from __future__ import print_function
import cv2 as cv
alpha = 0.5
try:
raw_input
except NameError:
raw_input = input
print(
''' Simple Linear Blender -----------------------
* Enter alpha [0.0-1.0]: ''')
input_alpha = float(raw_input().strip())
if 0 <= alpha <= 1:
alpha = input_alpha
src1 =
cv.imread(
'../../../../data/LinuxLogo.jpg')
src2 =
cv.imread(
'../../../../data/WindowsLogo.jpg')
if src1 is None:
print(
"Error loading src1")
exit(-1)
elif src2 is None:
print(
"Error loading src2")
exit(-1)
beta = (1.0 - alpha)
Explanation
Since we are going to perform:
\[g(x) = (1 - \alpha)f_{0}(x) + \alpha f_{1}(x)\]
We need two source images ( \(f_{0}(x)\) and \(f_{1}(x)\)). So, we load them in the usual way:
C++
src1 =
imread(
"../data/LinuxLogo.jpg" );
src2 =
imread(
"../data/WindowsLogo.jpg" );
Java
src1 = Imgcodecs.imread("../../images/LinuxLogo.jpg");
src2 = Imgcodecs.imread("../../images/WindowsLogo.jpg");
Python
src1 =
cv.imread(
'../../../../data/LinuxLogo.jpg')
src2 =
cv.imread(
'../../../../data/WindowsLogo.jpg')
We used the following images: LinuxLogo.jpg and WindowsLogo.jpg
- Warning
- Since we are adding src1 and src2, they both have to be of the same size (width and height) and type.
Now we need to generate the g(x)
image. For this, the function addWeighted() comes quite handy:
C++
Java
beta = ( 1.0 - alpha );
Core.addWeighted( src1, alpha, src2, beta, 0.0, dst);
Python
Numpy version of above line (but cv function is around 2x faster):
dst = np.uint8(alpha*(img1)+beta*(img2))
since addWeighted() produces:
\[dst = \alpha \cdot src1 + \beta \cdot src2 + \gamma\]
In this case, gamma
is the argument \(0.0\) in the code above.
Create windows, show the images and wait for the user to end the program.
C++
imshow(
"Linear Blend", dst );
Java
HighGui.imshow("Linear Blend", dst);
HighGui.waitKey(0);
Python
Result