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I need help to identify the border and compare the images with the original image. I need guidance on How can I achieve this through processing or matlab or anything for beginner. for example look at the image below.

Original Image:

enter image description here

The Multiple Image: Larger Image

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So, what have you tried? –  Keppil Dec 27 '13 at 14:51
1  
This is a similar question that might be of help: stackoverflow.com/q/10168686/2545927 –  kkuilla Jan 3 at 15:07

6 Answers 6

up vote 17 down vote accepted
+50

The "multiple image" you showed is easy enough to handle using just simple image processing, no need for template matching :)

% read the second image
img2 = imread('http://i.stack.imgur.com/zyHuj.jpg');
img2 = im2double(rgb2gray(img2));

% detect coca-cola logos
bw = im2bw(img2);                                       % Otsu's thresholding
bw = imfill(~bw, 'holes');                              % fill holes
stats = regionprops(bw, {'Centroid', 'BoundingBox'});   % connected components

% show centers and bounding boxes of each connected component
centers = vertcat(stats.Centroid);
imshow(img2), hold on
plot(centers(:,1), centers(:,2), 'LineStyle','none', ...
    'Marker','x', 'MarkerSize',20, 'Color','r', 'LineWidth',3)
for i=1:numel(stats)
    rectangle('Position',stats(i).BoundingBox, ...
        'EdgeColor','g', 'LineWidth',3)
end
hold off

enter image description here

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wow thanks Amro for your kind help !! this helped me a lot –  Daniel Euchar Jan 1 at 16:19

You can use correlation method to position the multiple images:

file1='http://i.stack.imgur.com/1KyJA.jpg';
file2='http://i.stack.imgur.com/zyHuj.jpg';
It = imread(file1);
Ii = imread(file2);
It=rgb2gray(It);
Ii=rgb2gray(Ii);
It=double(It);  % template
Ii=double(Ii);  % image

Ii_mean = conv2(Ii,ones(size(It))./numel(It),'same');
It_mean = mean(It(:));
corr_1 = conv2(Ii,rot90(It-It_mean,2),'same')./numel(It);
corr_2 = Ii_mean.*sum(It(:)-It_mean);
conv_std = sqrt(conv2(Ii.^2,ones(size(It))./numel(It),'same')-Ii_mean.^2);
It_std = std(It(:));
S = (corr_1-corr_2)./(conv_std.*It_std);

imagesc(abs(S))

The result will give you the positions with maximum values:

enter image description here

Get the coordinates of maxima, and position your template centroid at the same position, check the difference between your template and the matching image.

I am not sure what do you mean by "identify the border", but you can always extract the edges with canny detector:

bw=edge(It);
bw=imfill(bw,'holes');
figure,imshow(bw)
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I am new to matlab and this helped me a lot thanks @lennon310 –  Daniel Euchar Jan 1 at 16:18

You can simplify the process proposed by @lennon310 using the normxcorr2 function:

file1='http://i.stack.imgur.com/1KyJA.jpg';
file2='http://i.stack.imgur.com/zyHuj.jpg';
It = imread(file1);
Ii = imread(file2);
It=rgb2gray(It);
Ii=rgb2gray(Ii);
It=double(It);  % template
Ii=double(Ii);  % image

c=normxcorr2(It, Ii);
imagesc(c); 
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Below is presented a solution implemented in Java, using Marvin image processing framework.

Approach:

  1. Load, segment and scale (50x50) the logo in the "original image".
  2. Load, segment and scale (50x50) each logo in the "multiple image"
  3. For each logo in "mulitple image", compare with the logo in "original image". If it is almost the same, draw a rect to highlight.

Comparison method (inside diff plug-in):

For each pixel in two logos, compare each color component. If the difference in one color component is higher then a given threshold, consider that pixel different for the two logos. Compute the total number of different pixels. If two logos have a number of different pixels higher than another threshold, consider them different. IMPORTANT: This approach is very sensitive to rotation and perspective variation.

Since your sample ("multiple image") has only coca logos, I took the liberty to include another logo in order to assert the algorithm.

The Multiple Image 2

enter image description here

Output

enter image description here

In another test, I've included two another similar coca logos. Changing the threshold parameters you can specify whether you want the exact same logo or accept its variations. In the result below, the parameters were set to accept logo variations.

The Multiple Image 3

enter image description here

Output

enter image description here

Source code

public class Logos {

private MarvinImagePlugin threshold = MarvinPluginLoader.loadImagePlugin("org.marvinproject.image.color.thresholding");
private MarvinImagePlugin fill = MarvinPluginLoader.loadImagePlugin("org.marvinproject.image.fill.boundaryFill");
private MarvinImagePlugin scale = MarvinPluginLoader.loadImagePlugin("org.marvinproject.image.transform.scale");
private MarvinImagePlugin diff = MarvinPluginLoader.loadImagePlugin("org.marvinproject.image.difference.differenceColor");

public Logos(){

    // 1. Load, segment and scale the object to be found
    MarvinImage target = segmentTarget();

    // 2. Load the image with multiple objects
    MarvinImage original = MarvinImageIO.loadImage("./res/logos/logos.jpg");
    MarvinImage image = original.clone();

    // 3. Segment
    threshold.process(image, image);
    MarvinImage image2 = new MarvinImage(image.getWidth(), image.getHeight());
    fill(image, image2);
    MarvinImageIO.saveImage(image2, "./res/logos/logos_fill.jpg");

    // 4. Filter segments by its their masses
    LinkedHashSet<Integer> objects = filterByMass(image2, 10000);
    int[][] rects = getRects(objects, image2, original);
    MarvinImage[] subimages = getSubimages(rects, original);

    // 5. Compare the target object with each object in the other image
    compare(target, subimages, original, rects);
    MarvinImageIO.saveImage(original, "./res/logos/logos_out.jpg");
}

private void compare(MarvinImage target, MarvinImage[] subimages, MarvinImage original, int[][] rects){
    MarvinAttributes attrOut = new MarvinAttributes();
    for(int i=0; i<subimages.length; i++){
        diff.setAttribute("comparisonImage", subimages[i]);
        diff.setAttribute("colorRange", 30);
        diff.process(target, null, attrOut);
        if((Integer)attrOut.get("total") < (50*50)*0.6){
            original.drawRect(rects[i][0], rects[i][6], rects[i][7], rects[i][8], 6, Color.green);
        }
    }
}

private MarvinImage segmentTarget(){
    MarvinImage original = MarvinImageIO.loadImage("./res/logos/target.jpg");
    MarvinImage target = original.clone();
    threshold.process(target, target);
    MarvinImage image2 = new MarvinImage(target.getWidth(), target.getHeight());
    fill(target, image2);
    LinkedHashSet<Integer> objects = filterByMass(image2, 10000);
    int[][] rects = getRects(objects, image2, target);
    MarvinImage[] subimages = getSubimages(rects, original);
    return subimages[0];
}



private int[][] getRects(LinkedHashSet<Integer> objects, MarvinImage mask, MarvinImage original){
    List<int[]> ret = new ArrayList<int[]>();
    for(Integer color:objects){
        ret.add(getObjectRect(mask, color));
    }
    return ret.toArray(new int[0][0]);
}

private MarvinImage[] getSubimages(int[][] rects, MarvinImage original){
    List<MarvinImage> ret = new ArrayList<MarvinImage>();
    for(int[] r:rects){
        ret.add(getSubimage(r, original));
    }
    return ret.toArray(new MarvinImage[0]);
}

private MarvinImage getSubimage(int rect[], MarvinImage original){
    MarvinImage img = original.subimage(rect[0], rect[1], rect[2], rect[3]);
    MarvinImage ret = new MarvinImage(50,50);
    scale.setAttribute("newWidth", 50);
    scale.setAttribute("newHeight", 50);
    scale.process(img, ret);
    return ret;
}

private void fill(MarvinImage imageIn, MarvinImage imageOut){
    boolean found;
    int color= 0xFFFF0000;

    while(true){
        found=false;

        Outerloop:
        for(int y=0; y<imageIn.getHeight(); y++){
            for(int x=0; x<imageIn.getWidth(); x++){
                if(imageOut.getIntColor(x,y) == 0 && imageIn.getIntColor(x, y) != 0xFFFFFFFF){
                    fill.setAttribute("x", x);
                    fill.setAttribute("y", y);
                    fill.setAttribute("color", color);
                    fill.setAttribute("threshold", 120);
                    fill.process(imageIn, imageOut);
                    color = newColor(color);

                    found = true;
                    break Outerloop;
                }
            }
        }

        if(!found){
            break;
        }
    }
}

private LinkedHashSet<Integer> filterByMass(MarvinImage image, int mass){
    boolean found;
    HashSet<Integer> analysed = new HashSet<Integer>();
    LinkedHashSet<Integer> ret = new LinkedHashSet<Integer>();

    while(true){
        found=false;

        outerLoop:
        for(int y=0; y<image.getHeight(); y++){
            for(int x=0; x<image.getWidth(); x++){
                int color = image.getIntColor(x,y); 
                if(color != 0){
                    if(!analysed.contains(color)){
                        if(getMass(image, color) >= mass){
                            ret.add(color); 
                        }
                        analysed.add(color);
                        found = true;
                        break outerLoop;
                    }
                }
            }
        }

        if(!found){
            break;
        }
    }
    return ret;
}

private int getMass(MarvinImage image, int color){
    int total=0;
    for(int y=0; y<image.getHeight(); y++){
        for(int x=0; x<image.getWidth(); x++){
            if(image.getIntColor(x, y) == color){
                total++;
            }
        }
    }
    return total;
}

private int[] getObjectRect(MarvinImage mask, int color){
    int x1=-1;
    int x2=-1;
    int y1=-1;
    int y2=-1;

    for(int y=0; y<mask.getHeight(); y++){
        for(int x=0; x<mask.getWidth(); x++){
            if(mask.getIntColor(x, y) == color){

                if(x1 == -1 || x < x1){
                    x1 = x;
                }
                if(x2 == -1 || x > x2){
                    x2 = x;
                }
                if(y1 == -1 || y < y1){
                    y1 = y;
                }
                if(y2 == -1 || y > y2){
                    y2 = y;
                }
            }
        }
    }

    return new int[]{x1, y1, (x2-x1), (y2-y1)};
}

private int newColor(int color){
    int red = (color & 0x00FF0000) >> 16;
    int green = (color & 0x0000FF00) >> 8;
    int blue = (color & 0x000000FF);

    if(red <= green && red <= blue){
        red+=5;
    }
    else if(green <= red && green <= blue){
        green+=5;
    }
    else{
        blue+=5;
    }

    return 0xFF000000 + (red << 16) + (green << 8) + blue;
}

public static void main(String[] args) {
    new Logos();
}   
}
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The simple way (you don't need to write any code) - use Adaptive Vision Studio:

  1. AddLoadImage (and select the image with multiple logos)
  2. Add LocateMultipleObjects_EdgeBased.
  3. Connect outImage from LoadImage to inImage from second filter
  4. Edit inEdgeModel from LocateMultipleObjects_EdgeBased for example my editing result (use Load Image in the plugin to load the Model image ): Model
  5. Run program and change the parameters of LocateMultipleObjects_EdgeBased to find all elements (i changed inEdgeMagnitude to 9.0 ). You will also get scores for each image: program with results: enter image description here

In summary you need to add two filters: loadImage and LocateMultipleObjects_EdgeBased and select the model to find :) It's good for beginner you don't need to write any advanced programs. You can try to solve it also by: detecting circles, TemplateMatching_NCC etc etc...

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If you want to detect your object in an environment more complex (rotation, deformation, scaling, perspective), you need a detection method more efficient. I suggest you to see what is called a "cascade classifier for Haar features" OpenCv can propose you a lot of function to do this method rapidly. See this useful page

Or even by matlab you can see this example

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