290 lines
11 KiB
Markdown
290 lines
11 KiB
Markdown
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Histogram Calculation {#tutorial_histogram_calculation}
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=====================
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Goal
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----
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In this tutorial you will learn how to:
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- Use the OpenCV function @ref cv::split to divide an image into its correspondent planes.
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- To calculate histograms of arrays of images by using the OpenCV function @ref cv::calcHist
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- To normalize an array by using the function @ref cv::normalize
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@note In the last tutorial (@ref histogram_equalization) we talked about a particular kind of
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histogram called *Image histogram*. Now we will considerate it in its more general concept. Read on!
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### What are histograms?
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- Histograms are collected *counts* of data organized into a set of predefined *bins*
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- When we say *data* we are not restricting it to be intensity values (as we saw in the previous
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Tutorial). The data collected can be whatever feature you find useful to describe your image.
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- Let's see an example. Imagine that a Matrix contains information of an image (i.e. intensity in
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the range \f$0-255\f$):
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![image](images/Histogram_Calculation_Theory_Hist0.jpg)
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- What happens if we want to *count* this data in an organized way? Since we know that the *range*
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of information value for this case is 256 values, we can segment our range in subparts (called
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**bins**) like:
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\f[\begin{array}{l}
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[0, 255] = { [0, 15] \cup [16, 31] \cup ....\cup [240,255] } \\
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range = { bin_{1} \cup bin_{2} \cup ....\cup bin_{n = 15} }
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\end{array}\f]
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and we can keep count of the number of pixels that fall in the range of each \f$bin_{i}\f$. Applying
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this to the example above we get the image below ( axis x represents the bins and axis y the
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number of pixels in each of them).
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![image](images/Histogram_Calculation_Theory_Hist1.jpg)
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- This was just a simple example of how an histogram works and why it is useful. An histogram can
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keep count not only of color intensities, but of whatever image features that we want to measure
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(i.e. gradients, directions, etc).
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- Let's identify some parts of the histogram:
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a. **dims**: The number of parameters you want to collect data of. In our example, **dims = 1**
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because we are only counting the intensity values of each pixel (in a greyscale image).
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b. **bins**: It is the number of **subdivisions** in each dim. In our example, **bins = 16**
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c. **range**: The limits for the values to be measured. In this case: **range = [0,255]**
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- What if you want to count two features? In this case your resulting histogram would be a 3D plot
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(in which x and y would be \f$bin_{x}\f$ and \f$bin_{y}\f$ for each feature and z would be the number of
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counts for each combination of \f$(bin_{x}, bin_{y})\f$. The same would apply for more features (of
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course it gets trickier).
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### What OpenCV offers you
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For simple purposes, OpenCV implements the function @ref cv::calcHist , which calculates the
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histogram of a set of arrays (usually images or image planes). It can operate with up to 32
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dimensions. We will see it in the code below!
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Code
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----
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- **What does this program do?**
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- Loads an image
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- Splits the image into its R, G and B planes using the function @ref cv::split
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- Calculate the Histogram of each 1-channel plane by calling the function @ref cv::calcHist
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- Plot the three histograms in a window
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- **Downloadable code**: Click
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[here](https://github.com/Itseez/opencv/tree/master/samples/cpp/tutorial_code/Histograms_Matching/calcHist_Demo.cpp)
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- **Code at glance:**
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@code{.cpp}
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#include "opencv2/highgui.hpp"
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#include "opencv2/imgproc.hpp"
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#include <iostream>
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#include <stdio.h>
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using namespace std;
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using namespace cv;
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/*
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* @function main
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*/
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int main( int argc, char** argv )
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{
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Mat src, dst;
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/// Load image
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src = imread( argv[1], 1 );
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if( !src.data )
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{ return -1; }
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/// Separate the image in 3 places ( B, G and R )
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vector<Mat> bgr_planes;
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split( src, bgr_planes );
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/// Establish the number of bins
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int histSize = 256;
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/// Set the ranges ( for B,G,R) )
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float range[] = { 0, 256 } ;
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const float* histRange = { range };
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bool uniform = true; bool accumulate = false;
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Mat b_hist, g_hist, r_hist;
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/// Compute the histograms:
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calcHist( &bgr_planes[0], 1, 0, Mat(), b_hist, 1, &histSize, &histRange, uniform, accumulate );
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calcHist( &bgr_planes[1], 1, 0, Mat(), g_hist, 1, &histSize, &histRange, uniform, accumulate );
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calcHist( &bgr_planes[2], 1, 0, Mat(), r_hist, 1, &histSize, &histRange, uniform, accumulate );
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// Draw the histograms for B, G and R
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int hist_w = 512; int hist_h = 400;
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int bin_w = cvRound( (double) hist_w/histSize );
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Mat histImage( hist_h, hist_w, CV_8UC3, Scalar( 0,0,0) );
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/// Normalize the result to [ 0, histImage.rows ]
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normalize(b_hist, b_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );
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normalize(g_hist, g_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );
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normalize(r_hist, r_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );
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/// Draw for each channel
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for( int i = 1; i < histSize; i++ )
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{
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line( histImage, Point( bin_w*(i-1), hist_h - cvRound(b_hist.at<float>(i-1)) ) ,
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Point( bin_w*(i), hist_h - cvRound(b_hist.at<float>(i)) ),
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Scalar( 255, 0, 0), 2, 8, 0 );
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line( histImage, Point( bin_w*(i-1), hist_h - cvRound(g_hist.at<float>(i-1)) ) ,
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Point( bin_w*(i), hist_h - cvRound(g_hist.at<float>(i)) ),
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Scalar( 0, 255, 0), 2, 8, 0 );
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line( histImage, Point( bin_w*(i-1), hist_h - cvRound(r_hist.at<float>(i-1)) ) ,
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Point( bin_w*(i), hist_h - cvRound(r_hist.at<float>(i)) ),
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Scalar( 0, 0, 255), 2, 8, 0 );
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}
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/// Display
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namedWindow("calcHist Demo", WINDOW_AUTOSIZE );
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imshow("calcHist Demo", histImage );
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waitKey(0);
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return 0;
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}
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@endcode
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Explanation
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-----------
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1. Create the necessary matrices:
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@code{.cpp}
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Mat src, dst;
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@endcode
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2. Load the source image
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@code{.cpp}
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src = imread( argv[1], 1 );
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if( !src.data )
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{ return -1; }
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@endcode
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3. Separate the source image in its three R,G and B planes. For this we use the OpenCV function
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@ref cv::split :
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@code{.cpp}
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vector<Mat> bgr_planes;
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split( src, bgr_planes );
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@endcode
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our input is the image to be divided (this case with three channels) and the output is a vector
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of Mat )
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4. Now we are ready to start configuring the **histograms** for each plane. Since we are working
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with the B, G and R planes, we know that our values will range in the interval \f$[0,255]\f$
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a. Establish number of bins (5, 10...):
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@code{.cpp}
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int histSize = 256; //from 0 to 255
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@endcode
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b. Set the range of values (as we said, between 0 and 255 )
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@code{.cpp}
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/// Set the ranges ( for B,G,R) )
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float range[] = { 0, 256 } ; //the upper boundary is exclusive
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const float* histRange = { range };
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@endcode
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c. We want our bins to have the same size (uniform) and to clear the histograms in the
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beginning, so:
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@code{.cpp}
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bool uniform = true; bool accumulate = false;
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@endcode
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d. Finally, we create the Mat objects to save our histograms. Creating 3 (one for each plane):
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@code{.cpp}
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Mat b_hist, g_hist, r_hist;
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@endcode
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e. We proceed to calculate the histograms by using the OpenCV function @ref cv::calcHist :
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@code{.cpp}
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/// Compute the histograms:
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calcHist( &bgr_planes[0], 1, 0, Mat(), b_hist, 1, &histSize, &histRange, uniform, accumulate );
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calcHist( &bgr_planes[1], 1, 0, Mat(), g_hist, 1, &histSize, &histRange, uniform, accumulate );
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calcHist( &bgr_planes[2], 1, 0, Mat(), r_hist, 1, &histSize, &histRange, uniform, accumulate );
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@endcode
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where the arguments are:
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- **&bgr_planes[0]:** The source array(s)
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- **1**: The number of source arrays (in this case we are using 1. We can enter here also
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a list of arrays )
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- **0**: The channel (*dim*) to be measured. In this case it is just the intensity (each
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array is single-channel) so we just write 0.
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- **Mat()**: A mask to be used on the source array ( zeros indicating pixels to be ignored
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). If not defined it is not used
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- **b_hist**: The Mat object where the histogram will be stored
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- **1**: The histogram dimensionality.
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- **histSize:** The number of bins per each used dimension
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- **histRange:** The range of values to be measured per each dimension
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- **uniform** and **accumulate**: The bin sizes are the same and the histogram is cleared
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at the beginning.
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5. Create an image to display the histograms:
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@code{.cpp}
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// Draw the histograms for R, G and B
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int hist_w = 512; int hist_h = 400;
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int bin_w = cvRound( (double) hist_w/histSize );
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Mat histImage( hist_h, hist_w, CV_8UC3, Scalar( 0,0,0) );
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@endcode
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6. Notice that before drawing, we first @ref cv::normalize the histogram so its values fall in the
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range indicated by the parameters entered:
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@code{.cpp}
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/// Normalize the result to [ 0, histImage.rows ]
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normalize(b_hist, b_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );
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normalize(g_hist, g_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );
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normalize(r_hist, r_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );
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@endcode
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this function receives these arguments:
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- **b_hist:** Input array
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- **b_hist:** Output normalized array (can be the same)
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- **0** and\**histImage.rows: For this example, they are the lower and upper limits to
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normalize the values ofr_hist*\*
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- **NORM_MINMAX:** Argument that indicates the type of normalization (as described above, it
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adjusts the values between the two limits set before)
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- **-1:** Implies that the output normalized array will be the same type as the input
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- **Mat():** Optional mask
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7. Finally, observe that to access the bin (in this case in this 1D-Histogram):
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@code{.cpp}
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/// Draw for each channel
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for( int i = 1; i < histSize; i++ )
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{
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line( histImage, Point( bin_w*(i-1), hist_h - cvRound(b_hist.at<float>(i-1)) ) ,
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Point( bin_w*(i), hist_h - cvRound(b_hist.at<float>(i)) ),
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Scalar( 255, 0, 0), 2, 8, 0 );
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line( histImage, Point( bin_w*(i-1), hist_h - cvRound(g_hist.at<float>(i-1)) ) ,
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Point( bin_w*(i), hist_h - cvRound(g_hist.at<float>(i)) ),
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Scalar( 0, 255, 0), 2, 8, 0 );
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line( histImage, Point( bin_w*(i-1), hist_h - cvRound(r_hist.at<float>(i-1)) ) ,
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Point( bin_w*(i), hist_h - cvRound(r_hist.at<float>(i)) ),
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Scalar( 0, 0, 255), 2, 8, 0 );
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}
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@endcode
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we use the expression:
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@code{.cpp}
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b_hist.at<float>(i)
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@endcode
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where \f$i\f$ indicates the dimension. If it were a 2D-histogram we would use something like:
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@code{.cpp}
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b_hist.at<float>( i, j )
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@endcode
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8. Finally we display our histograms and wait for the user to exit:
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@code{.cpp}
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namedWindow("calcHist Demo", WINDOW_AUTOSIZE );
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imshow("calcHist Demo", histImage );
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waitKey(0);
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return 0;
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@endcode
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Result
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------
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1. Using as input argument an image like the shown below:
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![image](images/Histogram_Calculation_Original_Image.jpg)
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2. Produces the following histogram:
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![image](images/Histogram_Calculation_Result.jpg)
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