* Use the OpenCV function :hough_circles:`HoughCircles <>` to detect circles in an image.
Theory
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Hough Circle Transform
------------------------
* The Hough Circle Transform works in a *roughly* analogous way to the Hough Line Transform explained in the previous tutorial.
* In the line detection case, a line was defined by two parameters :math:`(r, \theta)`. In the circle case, we need three parameters to define a circle:
..math::
C : ( x_{center}, y_{center}, r )
where :math:`(x_{center}, y_{center})` define the center position (gree point) and :math:`r` is the radius, which allows us to completely define a circle, as it can be seen below:
:alt:Result of detecting circles with Hough Transform
:align:center
* For sake of efficiency, OpenCV implements a detection method slightly trickier than the standard Hough Transform: *The Hough gradient method*. For more details, please check the book *Learning OpenCV* or your favorite Computer Vision bibliography
Code
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#.**What does this program do?**
* Loads an image and blur it to reduce the noise
* Applies the *Hough Circle Transform* to the blurred image .
* Display the detected circle in a window.
..|TutorialHoughCirclesSimpleDownload|replace:: here
#. The sample code that we will explain can be downloaded from |TutorialHoughCirclesSimpleDownload|_. A slightly fancier version (which shows both Hough standard and probabilistic with trackbars for changing the threshold values) can be found |TutorialHoughCirclesFancyDownload|_.