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Mask operations on matrices are quite simple. The idea is that we recalculate each pixels value in an image according to a mask matrix (also known as kernel). This mask holds values that will adjust how much influence neighboring pixels (and the current pixel) have on the new pixel value. From a mathematical point of view we make a weighted average, with our specified values.
Let us consider the issue of an image contrast enhancement method. Basically we want to apply for every pixel of the image the following formula:
\[I(i,j) = 5*I(i,j) - [ I(i-1,j) + I(i+1,j) + I(i,j-1) + I(i,j+1)]\]
\[\iff I(i,j)*M, \text{where } M = \bordermatrix{ _i\backslash ^j & -1 & 0 & +1 \cr -1 & 0 & -1 & 0 \cr 0 & -1 & 5 & -1 \cr +1 & 0 & -1 & 0 \cr }\]
The first notation is by using a formula, while the second is a compacted version of the first by using a mask. You use the mask by putting the center of the mask matrix (in the upper case noted by the zero-zero index) on the pixel you want to calculate and sum up the pixel values multiplied with the overlapped matrix values. It's the same thing, however in case of large matrices the latter notation is a lot easier to look over.
You can download this source code from here or look in the OpenCV source code libraries sample directory at samples/cpp/tutorial_code/core/mat_mask_operations/mat_mask_operations.cpp
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You can download this source code from here or look in the OpenCV source code libraries sample directory at samples/java/tutorial_code/core/mat_mask_operations/MatMaskOperations.java
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You can download this source code from here or look in the OpenCV source code libraries sample directory at samples/python/tutorial_code/core/mat_mask_operations/mat_mask_operations.py
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Now let us see how we can make this happen by using the basic pixel access method or by using the filter2D() function.
Here's a function that will do this:
At first we make sure that the input images data is in unsigned char format. For this we use the cv::CV_Assert function that throws an error when the expression inside it is false.
At first we make sure that the input images data in unsigned 8 bit format.
At first we make sure that the input images data in unsigned 8 bit format.
We create an output image with the same size and the same type as our input. As you can see in the storing section, depending on the number of channels we may have one or more subcolumns.
We will iterate through them via pointers so the total number of elements depends on this number.
We'll use the plain C [] operator to access pixels. Because we need to access multiple rows at the same time we'll acquire the pointers for each of them (a previous, a current and a next line). We need another pointer to where we're going to save the calculation. Then simply access the right items with the [] operator. For moving the output pointer ahead we simply increase this (with one byte) after each operation:
On the borders of the image the upper notation results inexistent pixel locations (like minus one - minus one). In these points our formula is undefined. A simple solution is to not apply the kernel in these points and, for example, set the pixels on the borders to zeros:
We need to access multiple rows and columns which can be done by adding or subtracting 1 to the current center (i,j). Then we apply the sum and put the new value in the Result matrix.
On the borders of the image the upper notation results in inexistent pixel locations (like (-1,-1)). In these points our formula is undefined. A simple solution is to not apply the kernel in these points and, for example, set the pixels on the borders to zeros:
We need to access multiple rows and columns which can be done by adding or subtracting 1 to the current center (i,j). Then we apply the sum and put the new value in the Result matrix.
Applying such filters are so common in image processing that in OpenCV there exist a function that will take care of applying the mask (also called a kernel in some places). For this you first need to define an object that holds the mask:
Then call the filter2D() function specifying the input, the output image and the kernel to use:
The function even has a fifth optional argument to specify the center of the kernel, a sixth for adding an optional value to the filtered pixels before storing them in K and a seventh one for determining what to do in the regions where the operation is undefined (borders).
This function is shorter, less verbose and, because there are some optimizations, it is usually faster than the hand-coded method. For example in my test while the second one took only 13 milliseconds the first took around 31 milliseconds. Quite some difference.
For example:
Check out an instance of running the program on our YouTube channel .