how to find euclidean distance for an image

I have 100 images and i have to find the euclidean distance for it,and i have to take a query image and find the euclidean distance and retrieve the image ,i have extracted an feature of an image and have stored it in .mat file,please help

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Amazing. You have such diverse questions. I wonder how you manage to work on so many different things at a time.
Dear FIR, could you please send me the files to this project so I can have a better look and see if I might be able to help.
Thanks
Joel, did you notice that FIR posted this 15 months ago? I doubt he still needs your help on it. Besides, he accepted an answer already.
Can I use this formula to the find histogram similarity value "1-norm(y1-y0)/norm(y0)" which is used in image steganography

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 Accepted Answer

Dear FIR, Sorry FIR I can't overview your code you sent to me. To compute the Euclidean distance between images or image features, your vector length or matrix should have same dimensions. Let say your first image has 1 x 460 vector then your query should be of same length. If that is the case then you can easily find Euclidean distance by the code I have written below. You just have to ensure that the dimensions are the same. I give you example of Histogram feature of two images.
I = imread('myimage.jpg');
I = rgb2gray(I);
h = imhist(I); % this will have default bins 256
% now second image
J = imread('myimage1.jpg');
J = rgb2gray(J);
h1 = imhist(J); % this will have default bins 256
E_distance = sqrt(sum((h-h1).^2));
You can do it for 1000 images as well. Let say now your 1000 images histogram are concatenated into h1. where each column is one histogram. Then your query image histogram is h. Then distance can be computed as follow.
h_new = repmat(h,1,size(h1,2));
E_distance = sqrt(sum((h_new-h1).^2));

2 Comments

nice share Junaid... can i ask question similar to this one... i also have problem to compare 2 image at onetime, example of 2 simple image... http://i50.tinypic.com/259e5hh.jpg http://i47.tinypic.com/21m6q9c.jpg
so it is possible to get the x and y axis value for this difference?
I also have one doubt related to this..I want to classify normal and abnormal images..I m having histogram as a features for normal and abnormal images.. How can i compute the feature vectors for these histograms...

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More Answers (5)

Junaid
Junaid on 21 Dec 2011
Dear FIR,
Similar question was asked by one fellow. The solution you can see from following URL. I hope it might help you.

6 Comments

Juniard i have gone through it,but final question was not answered,which i need,I have one query image ,and other images in .mat file which are concatanated,now i have to find the euclidean distance for image retrieval,please help
Dear FIR,
Sorry FIR I can't overview your code you sent to me. To compute the Euclidean distance between images or image features, your vector length or matrix should have same dimensions. Let say your first image has 1 x 460 vector then your query should be of same length. If that is the case then you can easily find Euclidean distance by the code I have written below. You just have to ensure that the dimensions are the same. I give you example of Histogram feature of image.
I = imread('myimage.jpg');
I = rgb2gray(I);
h = imhist(I); % this will have default bins 256
% now second image
J = imread('myimage1.jpg');
J = rgb2gray(J);
h1 = imhist(J); % this will have default bins 256
E_distance = sqrt(sum((h-h1).^2));
You can do it for 1000 images as well.
How to get it for 10 images
Sandeep, two code snippets for processing a sequence of files are in the FAQ: http://matlab.wikia.com/wiki/FAQ#How_can_I_process_a_sequence_of_files.3F
sir, how to calculate the distance only for particular feature say left eye and right eye
You'd use the sqrt() function for that (calculating distance), once you have their coordinates.

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Dear Fir,
You have Query image Q, you want to compute euclidean distance of Q with all images in database. Is that you want ? If yes then Let say query Image Q is grayscale image so you can present it as feature vector
Q = Q(:); % this is one [size(Q,1) x size(Q,2) by 1]
all the images in database should have same dimensions. Let say every image and query image should have same number of pixels.
Now you load your database
D = load('Database.mat');
we assume that each column is one image and your number of columns should be size of Database. or if you want to present each row as image then simply take the transpose.
Q= repmat(Q,1,size(D,2));
E_distance = sqrt(sum((Q-D).^2));
Now E_distance have euclidean distance of Q with all images in database D.
Do let me know if It solved your problem.

3 Comments

He said "I have extracted features of 100 images and stored in .matfile.i have to find euclidean distance for those" so he wants to compare feature vectors, not the images themselves. Anyway trying to compare images on a pixel by pixel basis is only useful for certain kinds of situations, like characterizing compression/decompression algorithms, not, say for retrieving all images from a huge database that have faces in them.
Juniard i have uploaded my files,plz look it and suggest ideas
I have attached my program files plz see it and give suggestion
http://www.sendspace.com/file/t58trj
Juniard i get error wen executing ur code
Undefined function or method 'minus' for input arguments of type 'struct'.
Error in ==> features at 22
E_distance = sqrt(sum((Q-D).^2))

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doc bwdist
doc graydist
might be some places to start.

1 Comment

Sean can u tell how to process for image retrieval using query image by euclidean distance

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The Euclidean distance is another image. What do you mean "query image by Euclidean distance"? I don't even know what that means. Please explain.

6 Comments

I have extracted features of 100 images and stored in .matfile.i have to find euclidean distance for those and also i have to take an query image and find euclidean distance,and have to retrieve the image ..can u help please
That's not when you'd use bwdist(). You simply need to use the Pythagorean theorem on your feature vectors:
generalizedDistance = sqrt(mean((featureVector1 - featureVector2)^2));
Weight the various features (elements) if you want to or need to. This will compare the feature vectors of two images. Then compare the feature vector of your reference image to the feature vector of all other images (by calculating generalizedDistance ) to see which image has a feature vector closest to the feature vector of your reference image.
I have features vectors im .mat file
[1x487 double] [1x487 double] [1x487 double] [1x359 double] [1x359 double] [1x487 double] [1x487 double]
like this i have 100 values ,how to calculate euclidean distance for this,please tell
I don't understand that. What is that? Is your feature vector actually a cell array where the first cell has a 487 element row vector, same for the second cell, the third cell has a 359 element row vector, etc. Do you have 100 cells in your cell array? Feature vectors virtually never have thousands of features in them like that. I think you've chosen the wrong features. What does each feature represent? They should be things like the mean, standard deviation (for each color), perhaps the area fraction of edges or of "skin" pixels, maybe the presence of certain shapes, etc. Here's a nice database comparison that gets color feature vectors and retrieves images with those colors you select in it:
http://labs.ideeinc.com/multicolr/
I have attached my program files plz see it and give suggestion
http://www.sendspace.com/file/t58trj
I probably won't get to it. I'm leaving on 9 day vacation to Florida in a couple of hours.

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hi.. i needed some help regarding implementing quadtree decomposition and histogram based image retrieval i wanted to apply quadtree on an image and then on the segmented image histogram needs to be computed can u please help me out??

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Asked:

FIR
on 20 Dec 2011

Commented:

on 17 Oct 2020

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