Histogram?

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Superb
Superb on 9 May 2012
Hi, may I know why I failed to show the histogram of the image? Thanks
I=imread('1.jpg');
H=hist(I);
figure, imshow(H);
I'm new in this part, can anyone tell me which part I did wrong? thanks :)

Answers (4)

the cyclist
the cyclist on 9 May 2012
As you have coded this, H is not a grayscale image (which is what the command imshow shows.) H is simply the count of events in I.
Try just
hist(I)
to see the histogram. (I doubt that is really what you want, but try it and see.)
  2 Comments
Superb
Superb on 10 May 2012
Thanks, but it's give me an error
??? Error using ==> times
Integers can only be combined with integers of the same class, or scalar
doubles.
Error in ==> hist at 78
xx = miny + binwidth*(0:x);
Error in ==> Try at 29
hist(I);
Walter Roberson
Walter Roberson on 10 May 2012
hist(double(I))

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Wayne King
Wayne King on 9 May 2012
Are you trying this on a RGB (3D) image? or is it uint8 gray scale?
Do you have the Image Processing Toolbox?
I = imread('pout.tif');
imhist(I)
At any rate, don't use imshow(H), just
hist(I)
  4 Comments
Superb
Superb on 10 May 2012
and the original image is RGB, then i crop it, but it's still in RGB, thank :)
Superb
Superb on 10 May 2012
Even if I tried like this, it also give same error
I1a=imread('1.jpg');
hist(I1a);

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Geoff
Geoff on 10 May 2012
It's sorta weird to take the histogram of a 2D image... I don't know what it's going to tell you... Well, maybe it's not weird but anyway, you need to either convert your ints to doubles, or specify a non-double bucket range. I would use the latter:
hist(I, 0:255);
But then, as I said before, this is weird. I might be interested in only the intensities regardless of colour:
hist(I(:), 0:255);
Or I might want to preserve the colour (however many channels) and compute the histogram for each channel over the whole image:
hist( reshape(I, [], size(I,3)), 0:255 );
Don't be fooled by the coloured bars... MatLab defaults to Blue, Green, Red... But if your image channels are Red, Green, Blue this will be misleading.
[edit] Okay.. well, fine:
% Quick'n'dirty hack around default colours for RGB data
hist( fliplr(reshape(I, [], size(I,3))), 0:255 );
  6 Comments
Superb
Superb on 11 May 2012
Thanks Image Analyst, I got it and know it's differentiate by number 1 to 3.
if numberOfColorChannels = 1 then it's a gray scale (monochrome) image.
What do you mean by 1? Where to put this "1" if I wanted to show the hist of gray scale image? :)
Also, what is the ":" in 2 front arguments means, (:,:,1)? Can it be (1,:,:)? Why there is 3 empty spaces to fill in? What are them actually? Thanks again :)
Geoff
Geoff on 15 May 2012
Oh, I didn't see this comment. If you just have a grayscale image, you don't need that 3rd dimension because all you have is a 2D matrix representing a single colour in an image. The 3rd dimension is used for colour images, where (for RGB at least) index 1 represents red, 2 is green, 3 is blue.
When you use the ':' operator while indexing it means "all elements in this dimension". So, yourImage(:,:,2) means "all rows and columns of the blue channel". It is a shortcut for yourImage(1:end, 1:end, 2).

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Image Analyst
Image Analyst on 16 May 2012
Here, just run my demo:
% Program to read in all the RGB color images in a folder and
% display the histograms of each color channel.
% By ImageAnalyst, Feb. 2011
%----------------------------------------------------------
function RGB_Histogram_Demo()
% Change the current folder to the folder of this m-file.
if(~isdeployed)
cd(fileparts(which(mfilename)));
end
clc; % Clear command window.
clear; % Delete all variables.
close all; % Close all figure windows except those created by imtool.
imtool close all; % Close all figure windows created by imtool.
workspace; % Make sure the workspace panel is showing.
fontSize = 16;
try
% Read in standard MATLAB color demo images.
% Construct the folder name where the demo images live.
imagesFolder = fullfile(matlabroot, '\toolbox\images\imdemos');
if ~exist(imagesFolder, 'dir')
% That folder didn't exist. Ask user to specify folder.
message = sprintf('Please browse to your image folder');
button = questdlg(message, 'Specify Folder', 'OK', 'Cancel', 'OK');
drawnow; % Refresh screen to get rid of dialog box remnants.
if strcmpi(button, 'Cancel')
return;
else
imagesFolder = uigetdir();
if imagesFolder == 0
% Exit if uer clicked Cancel.
return;
end
end
end
% Read the directory to get a list of images.
filePattern = [imagesFolder, '\*.jpg'];
jpegFiles = dir(filePattern);
filePattern = [imagesFolder, '\*.tif'];
tifFiles = dir(filePattern);
filePattern = [imagesFolder, '\*.png'];
pngFiles = dir(filePattern);
filePattern = [imagesFolder, '\*.bmp'];
bmpFiles = dir(filePattern);
% Add more extensions if you need to.
imageFiles = [jpegFiles; tifFiles; pngFiles; bmpFiles];
% Bail out if there aren't any images in that folder.
numberOfImagesProcessed = 0;
numberOfImagesToProcess = length(imageFiles);
if numberOfImagesToProcess <= 0
message = sprintf('I did not find any JPG, TIF, PNG, or BMP images in the folder\n%s\nClick OK to Exit.', imagesFolder);
uiwait(msgbox(message));
return;
end
% Create a figure for our images.
figure;
set(gcf, 'Position', get(0,'Screensize')); % Maximize figure.
set(gcf,'name','Demo by ImageAnalyst','numbertitle','off')
% Preallocate arrays to hold the mean intensity values of all the images.
redChannel_Mean = zeros(numberOfImagesToProcess, 1);
greenChannel_Mean = zeros(numberOfImagesToProcess, 1);
blueChannel_Mean = zeros(numberOfImagesToProcess, 1);
% We'll be skipping monochrome and indexed images
% and just looking at true color images.
% Keep track of how many we actually look at.
numberOfImagesToProcess2 = numberOfImagesToProcess;
% Loop though all images, calculating and displaying the histograms.
% and then getting the means of the Red, green, and blue channels.
for k = 1 : numberOfImagesToProcess
% Read in this one file.
baseFileName = imageFiles(k).name;
fullFileName = fullfile(imagesFolder, baseFileName);
rgbImage = imread(fullFileName);
% Check to see that it is a color image (3 dimensions).
% Skip it if it is not true RGB color.
if ndims(rgbImage) < 3
% Skip monochrome or indexed images.
fprintf('Skipped %s. It is a grayscale or indexed image.\n', baseFileName);
% Decrement the number of images that we'll report that we need to look at.
numberOfImagesToProcess2 = numberOfImagesToProcess2 - 1;
continue;
end
% If we get to here, it's a true color image.
subplot(3, 3, 1);
imshow(rgbImage, []);
[rows columns numberOfColorBands] = size(rgbImage);
% Create a title for the image.
caption = sprintf('Original Color Image\n%s\n%d rows by %d columns by %d color channels', ...
baseFileName, rows, columns, numberOfColorBands);
% If there are underlines in the name, title() converts the next character to a subscript.
% To avoid this, replace underlines by spaces.
caption = strrep(caption, '_', ' ');
title(caption, 'FontSize', fontSize);
drawnow; % Force it to update, otherwise it waits until after the conversion to double.
% Extract the individual red, green, and blue color channels.
redChannel = rgbImage(:, :, 1);
greenChannel = rgbImage(:, :, 2);
blueChannel = rgbImage(:, :, 3);
% Red image:
subplot(3, 3, 4);
imshow(redChannel, []); % Display the image.
% Compute mean
redChannel_Mean(k) = mean(redChannel(:));
caption = sprintf('Red Image. Mean = %6.2f', redChannel_Mean(k));
title(caption, 'FontSize', fontSize);
% Compute and display the histogram for the Red image.
pixelCountRed = PlotHistogramOfOneColorChannel(redChannel, 7, 'Histogram of Red Image', 'r');
% Green image:
subplot(3, 3, 5);
imshow(greenChannel, []); % Display the image.
% Compute mean
greenChannel_Mean(k) = mean(greenChannel(:));
caption = sprintf('Green Image. Mean = %6.2f', greenChannel_Mean(k));
title(caption, 'FontSize', fontSize);
% Compute and display the histogram for the Green image.
pixelCountGreen = PlotHistogramOfOneColorChannel(greenChannel, 8, 'Histogram of Green Image', 'g');
% Blue image:
subplot(3, 3, 6);
imshow(blueChannel, []); % Display the image.
numberOfImagesProcessed = numberOfImagesProcessed + 1;
% Compute mean
blueChannel_Mean(k) = mean(blueChannel(:));
caption = sprintf('Blue Image. Mean = %6.2f', blueChannel_Mean(k));
title(caption, 'FontSize', fontSize);
% Compute and display the histogram for the Blue image.
pixelCountBlue = PlotHistogramOfOneColorChannel(blueChannel, 9, 'Histogram of Blue Image', 'b');
% Plot all three histograms on the same plot.
subplot(3, 3, 2:3);
lineWidth = 2;
hold off;
plot(pixelCountRed, 'r', 'LineWidth', lineWidth);
hold on;
grid on;
plot(pixelCountGreen, 'g', 'LineWidth', lineWidth);
plot(pixelCountBlue, 'b', 'LineWidth', lineWidth);
title('All the Color Histograms (Superimposed)', 'FontSize', fontSize);
% Set the x axis range manually to be 0-255.
xlim([0 255]);
% Prompt user to continue, unless they're at the last image.
if k < numberOfImagesToProcess
promptMessage = sprintf('Currently displaying image #%d of a possible %d:\n%s\n\nDo you want to\nContinue processing, or\nCancel processing?',...
numberOfImagesProcessed, numberOfImagesToProcess2, baseFileName);
button = questdlg(promptMessage, 'Continue?', 'Continue', 'Cancel', 'Continue');
if strcmp(button, 'Cancel')
break;
end
end
end
% Crop off any unassigned values:
redChannel_Mean = redChannel_Mean(1:numberOfImagesProcessed);
greenChannel_Mean = greenChannel_Mean(1:numberOfImagesProcessed);
blueChannel_Mean = blueChannel_Mean(1:numberOfImagesProcessed);
% Print to command window
fprintf(1, ' Filename, Red Mean, Green Mean, Blue Mean\n');
for k = 1 : length(redChannel_Mean)
baseFileName = imageFiles(k).name;
fprintf(1, '%24s %6.2f, %6.2f, %6.2f\n', ...
baseFileName, redChannel_Mean(k), greenChannel_Mean(k), blueChannel_Mean(k));
end
if numberOfImagesProcessed == 1
caption = sprintf('Done with demo!\n\nProcessed 1 image.\nCheck out the command window for the results');
else
caption = sprintf('Done with demo!\n\nProcessed %d images.\nCheck out the command window for the results', numberOfImagesProcessed);
end
msgbox(caption);
catch ME
errorMessage = sprintf('Error in function RGB_Hist_Demo.\n.\n\nError Message:\n%s', ME.message);
uiwait(warndlg(errorMessage));
end
%----------------------------------------------------------
% Plots a bar chart of the histogram of the color channel.
function pixelCount = PlotHistogramOfOneColorChannel(oneColorChannel, subplotNumber, caption, color)
try
% Let's get its histogram into 256 bins.
[pixelCount grayLevels] = imhist(oneColorChannel, 256);
subplot(3, 3, subplotNumber);
bar(grayLevels, pixelCount, 'FaceColor', color);
title(caption, 'FontSize', 16);
grid on;
% Set the x axis range manually to be 0-255.
xlim([0 255]);
catch ME
errorMessage = sprintf('Error in function PlotHistogramOfOneColorChannel.\n.\n\nError Message:\n%s', ME.message);
uiwait(warndlg(errorMessage));
end
return;
  10 Comments
Ryan
Ryan on 30 Jul 2012
Edited: Ryan on 30 Jul 2012
I found this document through Google about Gaussians that may help you (it's a direct link to a word document): www.cs.moravian.edu/~csalter/GaussianDist_3.1.doc
I believe what they (Microsoft) are doing is along the lines of what Image Analyst suggests in using the mean and std dev of the histogram, but they are most likely normalizing it first to have an area of 1.
Maria
Maria on 30 Jul 2012
I think your demo works fine but could you please see my problem which I mentioned above and verify the solution I am trying. If there is something wrong with the way i am trying to do could please rectify it.If you want me to send my code I'll post it too.Thanks a lot and sorry for bothering you.

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