6.8 KiB
Sobel Derivatives
Goal
In this tutorial you will learn how to:
- Use the OpenCV function @ref cv::Sobel to calculate the derivatives from an image.
- Use the OpenCV function @ref cv::Scharr to calculate a more accurate derivative for a kernel of size \f$3 \cdot 3\f$
Theory
@note The explanation below belongs to the book Learning OpenCV by Bradski and Kaehler.
-# In the last two tutorials we have seen applicative examples of convolutions. One of the most important convolutions is the computation of derivatives in an image (or an approximation to them). -# Why may be important the calculus of the derivatives in an image? Let's imagine we want to detect the edges present in the image. For instance:

You can easily notice that in an *edge*, the pixel intensity *changes* in a notorious way. A
good way to express *changes* is by using *derivatives*. A high change in gradient indicates a
major change in the image.
-# To be more graphical, let's assume we have a 1D-image. An edge is shown by the "jump" in intensity in the plot below:

-# The edge "jump" can be seen more easily if we take the first derivative (actually, here appears as a maximum)

-# So, from the explanation above, we can deduce that a method to detect edges in an image can be performed by locating pixel locations where the gradient is higher than its neighbors (or to generalize, higher than a threshold). -# More detailed explanation, please refer to Learning OpenCV by Bradski and Kaehler
Sobel Operator
-# The Sobel Operator is a discrete differentiation operator. It computes an approximation of the gradient of an image intensity function. -# The Sobel Operator combines Gaussian smoothing and differentiation.
Formulation
Assuming that the image to be operated is \f$I\f$:
-# We calculate two derivatives: -# Horizontal changes: This is computed by convolving \f$I\f$ with a kernel \f$G_{x}\f$ with odd size. For example for a kernel size of 3, \f$G_{x}\f$ would be computed as:
\f[G_{x} = \begin{bmatrix}
-1 & 0 & +1 \\
-2 & 0 & +2 \\
-1 & 0 & +1
\end{bmatrix} * I\f]
-# **Vertical changes**: This is computed by convolving \f$I\f$ with a kernel \f$G_{y}\f$ with odd
size. For example for a kernel size of 3, \f$G_{y}\f$ would be computed as:
\f[G_{y} = \begin{bmatrix}
-1 & -2 & -1 \\
0 & 0 & 0 \\
+1 & +2 & +1
\end{bmatrix} * I\f]
-# At each point of the image we calculate an approximation of the gradient in that point by combining both results above:
\f[G = \sqrt{ G_{x}^{2} + G_{y}^{2} }\f]
Although sometimes the following simpler equation is used:
\f[G = |G_{x}| + |G_{y}|\f]
@note
When the size of the kernel is 3
, the Sobel kernel shown above may produce noticeable
inaccuracies (after all, Sobel is only an approximation of the derivative). OpenCV addresses
this inaccuracy for kernels of size 3 by using the @ref cv::Scharr function. This is as fast
but more accurate than the standar Sobel function. It implements the following kernels:
\f[G_{x} = \begin{bmatrix}
-3 & 0 & +3 \
-10 & 0 & +10 \
-3 & 0 & +3
\end{bmatrix}\f]\f[G_{y} = \begin{bmatrix}
-3 & -10 & -3 \
0 & 0 & 0 \
+3 & +10 & +3
\end{bmatrix}\f]
@note
You can check out more information of this function in the OpenCV reference (@ref cv::Scharr ).
Also, in the sample code below, you will notice that above the code for @ref cv::Sobel function
there is also code for the @ref cv::Scharr function commented. Uncommenting it (and obviously
commenting the Sobel stuff) should give you an idea of how this function works.
Code
-# What does this program do? - Applies the Sobel Operator and generates as output an image with the detected edges bright on a darker background.
-# The tutorial code's is shown lines below. You can also download it from here @include samples/cpp/tutorial_code/ImgTrans/Sobel_Demo.cpp
Explanation
-# First we declare the variables we are going to use: @code{.cpp} Mat src, src_gray; Mat grad; char* window_name = "Sobel Demo - Simple Edge Detector"; int scale = 1; int delta = 0; int ddepth = CV_16S; @endcode -# As usual we load our source image src: @code{.cpp} src = imread( argv[1] );
if( !src.data )
{ return -1; }
@endcode
-# First, we apply a @ref cv::GaussianBlur to our image to reduce the noise ( kernel size = 3 ) @code{.cpp} GaussianBlur( src, src, Size(3,3), 0, 0, BORDER_DEFAULT ); @endcode -# Now we convert our filtered image to grayscale: @code{.cpp} cvtColor( src, src_gray, COLOR_RGB2GRAY ); @endcode -# Second, we calculate the "derivatives" in x and y directions. For this, we use the function @ref cv::Sobel as shown below: @code{.cpp} Mat grad_x, grad_y; Mat abs_grad_x, abs_grad_y;
/// Gradient X
Sobel( src_gray, grad_x, ddepth, 1, 0, 3, scale, delta, BORDER_DEFAULT );
/// Gradient Y
Sobel( src_gray, grad_y, ddepth, 0, 1, 3, scale, delta, BORDER_DEFAULT );
@endcode
The function takes the following arguments:
- *src_gray*: In our example, the input image. Here it is *CV_8U*
- *grad_x*/*grad_y*: The output image.
- *ddepth*: The depth of the output image. We set it to *CV_16S* to avoid overflow.
- *x_order*: The order of the derivative in **x** direction.
- *y_order*: The order of the derivative in **y** direction.
- *scale*, *delta* and *BORDER_DEFAULT*: We use default values.
Notice that to calculate the gradient in *x* direction we use: \f$x_{order}= 1\f$ and
\f$y_{order} = 0\f$. We do analogously for the *y* direction.
-# We convert our partial results back to CV_8U: @code{.cpp} convertScaleAbs( grad_x, abs_grad_x ); convertScaleAbs( grad_y, abs_grad_y ); @endcode -# Finally, we try to approximate the gradient by adding both directional gradients (note that this is not an exact calculation at all! but it is good for our purposes). @code{.cpp} addWeighted( abs_grad_x, 0.5, abs_grad_y, 0.5, 0, grad ); @endcode -# Finally, we show our result: @code{.cpp} imshow( window_name, grad ); @endcode
Results
-# Here is the output of applying our basic detector to lena.jpg:
