OpenCV
5.0.0alpha
Open Source Computer Vision
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Original author | Ana Huamán |
Compatibility | OpenCV >= 3.0 |
In this tutorial you will learn how to:
This tutorial's code is shown below. You can also download it here
This tutorial's code is shown below. You can also download it here
This tutorial's code is shown below. You can also download it here
Most of the material shown here is trivial (if you have any doubt, please refer to the tutorials in previous sections). Let's check the general structure of the C++ program:
Every time we move any slider, the user's function Erosion or Dilation will be called and it will update the output image based on the current trackbar values.
Let's analyze these two functions:
The function that performs the erosion operation is cv::erode . As we can see, it receives three arguments:
element: This is the kernel we will use to perform the operation. If we do not specify, the default is a simple 3x3
matrix. Otherwise, we can specify its shape. For this, we need to use the function cv::getStructuringElement :
We can choose any of three shapes for our kernel:
Then, we just have to specify the size of our kernel and the anchor point. If not specified, it is assumed to be in the center.
That is all. We are ready to perform the erosion of our image.
The code is below. As you can see, it is completely similar to the snippet of code for erosion. Here we also have the option of defining our kernel, its anchor point and the size of the operator to be used.
Most of the material shown here is trivial (if you have any doubt, please refer to the tutorials in previous sections). Let's check however the general structure of the java class. There are 4 main parts in the java class:
addComponentsToPane
method, which fills out the windowupdate
method, which determines what happens when the user changes any valuemain
method, which is the entry point of the programIn this tutorial we will focus on the addComponentsToPane
and update
methods. However, for completion the steps followed in the constructor are:
addComponentsToPane
The components were added by the following method:
In short we
The action and state changed listeners added call at the end the update
method which updates the image based on the current slider values. So every time we move any slider, the update
method is triggered.
To update the image we used the following implementation:
In other words we
doErosion
Let's analyze the erode
and dilate
methods:
The function that performs the erosion operation is cv::erode . As we can see, it receives three arguments:
element: This is the kernel we will use to perform the operation. For specifying the shape, we need to use the function cv::getStructuringElement :
We can choose any of three shapes for our kernel:
Together with the shape we specify the size of our kernel and the anchor point. If the anchor point is not specified, it is assumed to be in the center.
That is all. We are ready to perform the erosion of our image.
The code is below. As you can see, it is completely similar to the snippet of code for erosion. Here we also have the option of defining our kernel, its anchor point and the size of the operator to be used.
Most of the material shown here is trivial (if you have any doubt, please refer to the tutorials in previous sections). Let's check the general structure of the python script:
Every time we move any slider, the user's function erosion or dilation will be called and it will update the output image based on the current trackbar values.
Let's analyze these two functions:
The function that performs the erosion operation is cv::erode . As we can see, it receives two arguments and returns the processed image:
element: The kernel we will use to perform the operation. We can specify its shape by using the function cv::getStructuringElement :
We can choose any of three shapes for our kernel:
Then, we just have to specify the size of our kernel and the anchor point. If the anchor point not specified, it is assumed to be in the center.
That is all. We are ready to perform the erosion of our image.
The code is below. As you can see, it is completely similar to the snippet of code for erosion. Here we also have the option of defining our kernel, its anchor point and the size of the operator to be used.
Compile the code above and execute it (or run the script if using python) with an image as argument. If you do not provide an image as argument the default sample image (LinuxLogo.jpg) will be used.
For instance, using this image:
We get the results below. Varying the indices in the Trackbars give different output images, naturally. Try them out! You can even try to add a third Trackbar to control the number of iterations.
(depending on the programming language the output might vary a little or be only 1 window)