Here is what I have

im = cv2.imread('luffy.jpg')
gray = cv2.cvtColor(im,cv2.COLOR_BGR2GRAY)
ret,thresh = cv2.threshold(gray,127,255,0)

contours,h = cv2.findContours(thresh,cv2.RETR_TREE,cv2.CHAIN_APPROX_SIMPLE)

for cnt in contours:

    // return color inside of the contour here
    mask = np.zeros(cnt.shape[:2],np.uint8)
    mean = cv2.mean(cant,mask)   // I think this is promising but so far it returns arrays with just zeros. I think its because I used np.zeros above to find the mask....
    moment = cv2.moments(cnt)   //maybe this will help?

I can find no such openCV function built in. I assume perhaps you can do it with the moments? How can I achieve this??

EDIT: with the proposed solution given by Zaw Lin I have this input image:

enter image description here

and this output image:

enter image description here

  • one way is: you can get the image area within the contour and then use it for further processing. Crop the internal area see this: stackoverflow.com/questions/28759253/…
    – Vipul
    Jan 24 '16 at 7:09
  • I think the best way is to process the histogram of the inside image. this may help.
    – Mahm00d
    Jan 24 '16 at 8:14
  • the first link seems to give a blank white cropping so I couldn't use it to find the color. The histogram might work, but it seems suited to make an actual histogram. I can't find a way to average the values of each channel for instance. I have found that you can run cv2.mean(cnt, mask) on a contour to get the mean values of the BGR channels, which seems promising. So far, no success though
    – BigBoy1337
    Jan 24 '16 at 23:37

This gets the average color inside each contour and draws contours with that color to final image.

import cv2
import numpy as np
im = cv2.imread('/home/zawlin/test.png')

gray = cv2.cvtColor(im,cv2.COLOR_BGR2GRAY)
contours,h = cv2.findContours(gray,cv2.RETR_TREE,cv2.CHAIN_APPROX_SIMPLE)

final = np.zeros(im.shape,np.uint8)
mask = np.zeros(gray.shape,np.uint8)

for i in xrange(0,len(contours)):

  • Im thinking this works, because there aren't any errors, however it does a horrible job. Are you getting good results with it? - the same image basically output with averaged colors...
    – BigBoy1337
    Jan 27 '16 at 0:28
  • I did not test if the result is good or not. I just used the image @sturkmen posted and I have the same result as his. Maybe you can post your image?
    – Zaw Lin
    Jan 27 '16 at 0:31
  • i have given a sample in the question. clearly its not working very well yet, though I'm not sure what the cause is
    – BigBoy1337
    Jan 27 '16 at 0:51
  • 1
    ah i think i understand what you are trying to do. i think a large part of whether it's "working" depends on the contour detection step but you cannot do it in this way. You need to perform some kind of segmentation algorithm. A typical method is just use kmeans to do color quantization. take a look here(docs.opencv.org/3.0-beta/_images/oc_color_quantization.jpg) is this what you are expecting? i have some code in c++ which can do this.
    – Zaw Lin
    Jan 27 '16 at 5:52
  • That is the affect I am looking for, but I would like to also to map the colors to their respective areas that they are filling. Thus I know that mario's hat is RGB=(243,23,42) for instance. In other words, does color quantization record the shapes of the polygons that are being filled?
    – BigBoy1337
    Jan 27 '16 at 19:21

i think function mean with a mask image is the only way to get color inside a contour but sorry i can't show it by Python code.

you can get bounding box of a contour by boundingRect and use it to get image ROI from source image and binarized image for masking ( be aware of cloning binarized image because findcontour destroys it)

maybe a sample c++ will be useful ( sorry for my poor english.)

#include "opencv2/highgui/highgui.hpp"
#include "opencv2/imgproc/imgproc.hpp"
#include <iostream>

using namespace cv;
using namespace std;

int main( int, char** argv )
  /// Load source image
  Mat src = imread(argv[1]);
  if (src.empty())
    cerr << "No image supplied ..." << endl;
    return -1;

  /// Convert image to gray
  Mat src_gray;
  cvtColor( src, src_gray, COLOR_BGR2GRAY );
  threshold( src_gray, src_gray, 50, 255, THRESH_BINARY );
  imshow( "src_gray", src_gray );
  /// Find contours
  vector<vector<Point> > contours;
  findContours( src_gray.clone(), contours, RETR_TREE, CHAIN_APPROX_SIMPLE );

  Mat resImage0 = src.clone();
  Mat resImage1 = src.clone();
  /// Draw contours
  for( size_t i = 0; i< contours.size(); i++ )
       Scalar color = Scalar( 0, 0, 255 );
       Rect _boundingRect = boundingRect( contours[i] );
       Scalar mean_color0 = mean( src( _boundingRect ) );
       Scalar mean_color1 = mean( src( _boundingRect ), src_gray( _boundingRect ) );

       drawContours( resImage0, contours, (int)i, mean_color0, FILLED );
       drawContours( resImage1, contours, (int)i, mean_color1, FILLED );

  /// Show in a window
  imshow( "src", src );
  imshow( "resImage0", resImage0 );
  imshow( "resImage1", resImage1 );

input image:

enter image description here

output images:

enter image description here enter image description here

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.