You can add two images by OpenCV function, cv.add() or simply by numpy operation, res = img1 + img2. Both images should be of same depth and type, or second image can just be a scalar value.
For example, consider below sample:
It will be more visible when you add two images. OpenCV function will provide a better result. So always better stick to OpenCV functions.
This is also image addition, but different weights are given to images so that it gives a feeling of blending or transparency. Images are added as per the equation below:
\[g(x) = (1 - \alpha)f_{0}(x) + \alpha f_{1}(x)\]
By varying \(\alpha\) from \(0 \rightarrow 1\), you can perform a cool transition between one image to another.
Here I took two images to blend them together. First image is given a weight of 0.7 and second image is given 0.3. cv.addWeighted() applies following equation on the image.
\[dst = \alpha \cdot img1 + \beta \cdot img2 + \gamma\]
Here \(\gamma\) is taken as zero.
Check the result below:
This includes bitwise AND, OR, NOT and XOR operations. They will be highly useful while extracting any part of the image (as we will see in coming chapters), defining and working with non-rectangular ROI etc. Below we will see an example on how to change a particular region of an image.
I want to put OpenCV logo above an image. If I add two images, it will change color. If I blend it, I get an transparent effect. But I want it to be opaque. If it was a rectangular region, I could use ROI as we did in last chapter. But OpenCV logo is a not a rectangular shape. So you can do it with bitwise operations as below:
See the result below. Left image shows the mask we created. Right image shows the final result. For more understanding, display all the intermediate images in the above code, especially img1_bg and img2_fg.