Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Below is a source code that i download from somewhere, it is able to detect red color objects and display its center coordinate.

a = imaqhwinfo;
[camera_name, camera_id, format] = getCameraInfo(a);


% Capture the video frames using the videoinput function
% You have to replace the resolution & your installed adaptor name.
vid = videoinput(camera_name, camera_id, format);

% Set the properties of the video object
set(vid, 'FramesPerTrigger', Inf);
set(vid, 'ReturnedColorspace', 'rgb')
vid.FrameGrabInterval = 1;

%start the video aquisition here
start(vid)

% Set a loop that stop after 100 frames of aquisition
while(vid.FramesAcquired<=100)

% Get the snapshot of the current frame
data = getsnapshot(vid);

% Now to track red objects in real time
% we have to subtract the red component 
% from the grayscale image to extract the red components in the image.
diff_im = imsubtract(data(:,:,1), rgb2gray(data));
%Use a median filter to filter out noise
diff_im = medfilt2(diff_im, [3 3]);
% Convert the resulting grayscale image into a binary image.
diff_im = im2bw(diff_im,0.17);

% Remove all those pixels less than 300px
diff_im = bwareaopen(diff_im,300);

% Label all the connected components in the image.
bw = bwlabel(diff_im, 8);

% Here we do the image blob analysis.
% We get a set of properties for each labeled region.
stats = regionprops(bw, 'BoundingBox', 'Centroid');

% Display the image
imshow(data)

hold on

%This is a loop to bound the red objects in a rectangular box.
for object = 1:length(stats)
    bb = stats(object).BoundingBox;
    bc = stats(object).Centroid;
    rectangle('Position',bb,'EdgeColor','r','LineWidth',2)
    plot(bc(1),bc(2), '-m+')
    a=text(bc(1)+15,bc(2), strcat('X: ', num2str(round(bc(1))), 'Y: ',  num2str(round(bc(2)))));
    %disp(' X-Coordinate   Y-cordinate')
    %x=gallery('uniformdata',[5 3],0);
    %disp(x)
    set(a, 'FontName', 'Arial', 'FontWeight', 'bold', 'FontSize', 12, 'Color',      'yellow');
end

hold off
end
% Both the loops end here.

% Stop the video aquisition.
stop(vid);

% Flush all the image data stored in the memory buffer.
flushdata(vid);

% Clear all variables
% clear all
sprintf('%s','That was all about Image tracking, Guess that was pretty easy :) ')

the problem is i would like to detect the pupil of the eye, so i need to detect black color in the image, but i have no idea how to modified the code to change it able to detect black color. So, any idea to this? please help me, thanks you all.

share|improve this question

closed as too localized by Paul R, Tim Post May 10 '12 at 9:06

This question is unlikely to help any future visitors; it is only relevant to a small geographic area, a specific moment in time, or an extraordinarily narrow situation that is not generally applicable to the worldwide audience of the internet. For help making this question more broadly applicable, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

add comment

1 Answer 1

diff_im = imsubtract(data(:,:,1), rgb2gray(data));

is where the algorithm extracts the red component of the color data. So that's where you have to make some changes.

Instead of extracting the red component (as pointed out in the comments of your code), you can just continue with the grayscale.

diff_im = rgb2gray(data);

But I think this would result in finding white objects. To counter this problem you can change the blob analysis, or just invert the input.I think it goes like this:

diff_im = imcomplement(rgb2gray(data));

I can't test it here though, cause I have no access to the Image Processing Toolbox. Can you test it out for yourself?

Test in octave with the image package

The picture I used for testing is found here.

% Get the snapshot of the current frame
  data = imread('child-eye1-560x372.jpg');

% Now to track red objects in real time we have to subtract the red component
% from the grayscale image to extract the red components in the image.
  diff_im = rgb2gray(data);
  imwrite(diff_im,'diff_im.jpg');
%Use a median filter to filter out noise
  diff_im = medfilt2(diff_im, [3 3]);
  imwrite(diff_im,'diff_im_filt1.jpg');
% Convert the resulting grayscale image into a binary image.
  diff_im = im2bw(diff_im,0.17);
  imwrite(diff_im,'diff_im_filt2.jpg');

These are just the filtering steps, the blob analysis functions are not available in octave. The resulting images are:

child-eye1-560x372.jpg diff_im.jpg diff_im_filt1.jpg diff_im_filt2.jpg

If I lower the filter value of im2bw to 0.07, the results is even better: diff_im_filt2b.jpg

As you can see, this part of the process seems all right. The last image is binary, so that large big blob shouldn't be too difficult to find. As before I can't test it myself...

Maybe the problem isn't in the algorithm, but in the data you provide it with. If there are numerous small black blobs in the picture, the algorithm will find them all and include them in its result..

share|improve this answer
    
I tested already, but the result is whole image. –  user1383057 May 8 '12 at 23:28
    
then you'll have to play with the filter settings: % Convert the resulting grayscale image into a binary image. diff_im = im2bw(diff_im,0.17); Can you lower that 0.17 value till it gets better, ie not the whole image gets selected? –  Gunther Struyf May 9 '12 at 7:15
    
thanks you first, i have tried it with adjust the filter value, but it is still select the whole image! and 1 more things is when i using an external usb webcam(before that i was using the laptop built-in webcam), the program is hang after it capture a picture. So, i had set the framegrabinterval bigger untill 3 to 5, then is consider ok now, but i wish to know is why? is it the webcam's output format different? –  user1383057 May 9 '12 at 11:23
add comment

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