# How to flatten a color histogram in c++?

Hi I have written the following lines of code in python:

``````# convert the image to HSV color-space
image = cv2.cvtColor(image, cv2.COLOR_BGR2HSV)

# compute the color histogram
hist  = cv2.calcHist([image], [0, 1, 2], None, [bins, bins, bins], [5, 240, 5, 240, 5, 240])

# normalize the histogram
cv2.normalize(hist, hist)

# return the histogram
return hist.flatten()
``````

I am now trying to re-write it in c++. I found a excellent example at http://www.swarthmore.edu/NatSci/mzucker1/opencv-2.4.10-docs/doc/tutorials/imgproc/histograms/histogram_calculation/histogram_calculation.html

The problem which I face now is to flatten the hist in c++ such as in the python code.This is the shape of the flatten hist output in python (512,). Any ideas as how to get the same results in c++?

(Edit) c++ code up to this point.

`````` resize(image,image,size);//resize image

cvtColor(image, image, CV_BGR2HSV);
// Separate the image in 3 places ( H, S and V )
vector<Mat> bgr_planes;
split(image, bgr_planes );

vector<Mat> hist_flat;

// Establish the number of bins
int histSize = 256;

// Set the ranges ( for H,S,V) )
float range[] = {5, 240} ;
const float* histRange = { range };

bool uniform = true; bool accumulate = false;

Mat b_hist, g_hist, r_hist;

cout << " Working fine Johan...";

// Compute the histograms:
calcHist( &bgr_planes[0], 1, 0, Mat(), b_hist, 1, &histSize, &histRange, uniform, accumulate );
calcHist( &bgr_planes[1], 1, 0, Mat(), g_hist, 1, &histSize, &histRange, uniform, accumulate );
calcHist( &bgr_planes[2], 1, 0, Mat(), r_hist, 1, &histSize, &histRange, uniform, accumulate );
//calcHist( &image,3, 0, Mat(), hist_flat, 1, &histSize, &histRange, uniform, accumulate );

// Draw the histograms for B, G and R
int hist_w = 512; int hist_h = 400;
int bin_w = cvRound( (double) hist_w/histSize );

Mat histImage(hist_h,hist_w, CV_8UC3, Scalar(0,0,0));

// Normalize the result to [ 0, histImage.rows ]
normalize(b_hist, b_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );
normalize(g_hist, g_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );
normalize(r_hist, r_hist, 0, histImage.rows, NORM_MINMAX, -1, Mat() );

// Draw for each channel
for( int i = 1; i < histSize; i++ )
{
line( histImage, Point( bin_w*(i-1), hist_h - cvRound(b_hist.at<float>(i-1)) ) ,
Point( bin_w*(i), hist_h - cvRound(b_hist.at<float>(i)) ),
Scalar( 255, 0, 0), 2, 8, 0  );
line( histImage, Point( bin_w*(i-1), hist_h - cvRound(g_hist.at<float>(i-1)) ) ,
Point( bin_w*(i), hist_h - cvRound(g_hist.at<float>(i)) ),
Scalar( 0, 255, 0), 2, 8, 0  );
line( histImage, Point( bin_w*(i-1), hist_h - cvRound(r_hist.at<float>(i-1)) ) ,
Point( bin_w*(i), hist_h - cvRound(r_hist.at<float>(i)) ),
Scalar( 0, 0, 255), 2, 8, 0  );
}

// Display

imshow("calcHist Demo", histImage );
imshow("The image resized",image);
``````
• Strictly speaking there are no histograms in c++ if you dont use some library that provides such functionality. However, a `std::map<T,unsigned>` provides already all you need for a histogram. That being said, Stackoverflow is not a codewriting service, if you want to get help you need to show what you tried and ask a specific question – formerlyknownas_463035818 Aug 28 '18 at 20:25
• Hi thanks for the comment. I am currently using opencv to provide the functionality to be able to create a histogram of a given image. Here is the c++ code which I have written up to this point (added to question).To be more specific how can I flatten the histogram generated for a given image using opencv 3.1.0 and c++. In the code I have written I break the image up into HSV parts and then determine the histograms and plot them in for visualization purposes. – Johan Fick Aug 28 '18 at 20:42

Just to add one more answer to this question. Since you are using OpenCV cv::Mat as your histogram holder, one way to flatten it is using reshape for example:

``````// create mat a with 512x512 size and float type
cv::Mat a(512,512,CV_32F);
// resize it to have only 1 row
a = a.reshape(0,1);
``````

This O(1) function and does not copy the elements, just changes the cv::Mat header to have the correct size.

After it you will have a 1 row cv::mat with 262144 columns.

Basically you want to flatten a 2D array ( `hist = cv2.calcHist([image], [0, 1, 2], None, [bins, bins, bins], [5, 240, 5, 240, 5, 240])` is 2D array 235x3 )

Easiest code for this is in is in function in C++ similar to numpy flatten

The basic algorithm is ( cf http://www.ce.jhu.edu/dalrymple/classes/602/Class12.pdf )

``````for (q = 0; q < n; q++)
{
for (t = 0; t < m; t++)
{
b[q * n + t] = a[q][t];  <-------
}
}
``````

source : C++ 2D array to 1D array

( for 3D array cf How to "flatten" or "index" 3D-array in 1D array? )

• Hi thank you very much! I think this is going to solve my problem. – Johan Fick Aug 28 '18 at 20:53