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Straighten edges of black rectangle in binary image

조회 수: 3 (최근 30일)
Kal
Kal 2013년 4월 24일
이동: DGM 2023년 2월 20일
I have a binary image that represents a 'rectangle'. The rectangle is not perfect because a top view of the box was taken (then converted to a binary image). My objective is to find four corner points of the black rectangle. In order for the corner function to work the edges must be completely straight.
clc; clear;
image = imread('0148pm.jpg');
g = rgb2gray(image)
level = graythresh(g);
binary = im2bw(image,level);
imwrite(binary,'imageBinary.jpg');
% Iinv = ~binary; %Invert your binary image
% Iinv = bwareaopen(Iinv,20); %Get rid of small areas (below your size criterion)
% I = ~Inv; %Invert back
imshow(I);
% fill = bwmorph(binary,'hbreak');
%
% f = bwmorph(fill,'majority');
%
% k = bwmorph(f,'close');
%corner algorithm///////////////////////////////////////////////////
% C = corner(k,'MinimumEigenvalue', 4)
% imtool(k);
% hold on
% plot(C(:,1), C(:,2), 'r*');
%end corner algorithm///////////////////////////////////////////////
  댓글 수: 3
Kal
Kal 2013년 4월 24일
I need to find the corners of the black 'rectangle'. That corner algorithm isn't finding the corners of rectangle because edges are not straight and it has discontinuities.
Kal
Kal 2013년 4월 24일
편집: Image Analyst 2013년 4월 24일
These are the corners being detected currently.

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채택된 답변

Image Analyst
Image Analyst 2013년 4월 25일
편집: Image Analyst 2013년 4월 25일
Another way that is pretty easy way, probably the most straightforward is to simply find the centroid of the square and divide it up into quadrants around the centroid. The examine all the points to see which is farthest from the centroid. Like this code:
clc; % Clear the command window.
close all; % Close all figures (except those of imtool.)
imtool close all; % Close all imtool figures if you have the Image Processing Toolbox.
clear; % Erase all existing variables. Or clearvars if you want.
workspace; % Make sure the workspace panel is showing.
format long g;
format compact;
fontSize = 20;
% Read in a standard MATLAB gray scale demo image.
folder = 'C:\Users\User\Documents\Temporary';
baseFileName = 'w0lwro.jpg';
% Get the full filename, with path prepended.
fullFileName = fullfile(folder, baseFileName);
% Check if file exists.
if ~exist(fullFileName, 'file')
% File doesn't exist -- didn't find it there. Check the search path for it.
fullFileName = baseFileName; % No path this time.
if ~exist(fullFileName, 'file')
% Still didn't find it. Alert user.
errorMessage = sprintf('Error: %s does not exist in the search path folders.', fullFileName);
uiwait(warndlg(errorMessage));
return;
end
end
grayImage = imread(fullFileName);
% Get the dimensions of the image.
% numberOfColorBands should be = 1.
[rows, columns, numberOfColorBands] = size(grayImage);
% Display the original gray scale image.
subplot(2, 2, 1);
imshow(grayImage, []);
title('Original Grayscale Image', 'FontSize', fontSize);
% Enlarge figure to full screen.
set(gcf, 'units','normalized','outerposition',[0 0 1 1]);
% Give a name to the title bar.
set(gcf,'name','Demo by ImageAnalyst','numbertitle','off')
% Let's compute and display the histogram.
[pixelCount, grayLevels] = imhist(grayImage);
subplot(2, 2, 2);
bar(pixelCount);
grid on;
title('Histogram of original image', 'FontSize', fontSize);
xlim([0 grayLevels(end)]); % Scale x axis manually.
binaryImage = grayImage < 128;
% Get rid of small blobs, smaller than two rows of pixels.
binaryImage = bwareaopen(binaryImage, 2*rows);
% Display the original gray scale image.
subplot(2, 2, 3);
imshow(binaryImage, []);
title('Binary Image', 'FontSize', fontSize);
% Label the image.
[labeledImage, numberOfBlobs] = bwlabel(binaryImage);
% Find the centroid
measurements = regionprops(labeledImage, 'Centroid');
% Put a cross at the centroid.
xCentroid = measurements.Centroid(1);
yCentroid = measurements.Centroid(2);
fprintf('X Centroid = %.3f, Y Centroid = %.3f', xCentroid, yCentroid);
hold on;
plot(xCentroid, yCentroid, 'r+', 'MarkerSize', 30);
% Find out how far the centroid is from points in each quadrant
% First get all the points.
[rows columns] = find(binaryImage);
xCorners = [0 0 0 0]; % X coordinate of corners in each quadrant.
yCorners = [0 0 0 0]; % X coordinate of corners in each quadrant.
maxDistance = [0 0 0 0]; % Distance of furthers X coordinate from centroid in each quadrant.
for k = 1 : length(columns)
rowk = rows(k);
colk = columns(k);
distanceSquared = (colk - xCentroid)^2 + (rowk - yCentroid)^2;
if rowk < yCentroid
% It's in the top half
if colk < xCentroid
% It's in the upper left quadrant
if distanceSquared > maxDistance(1)
% Record the new furthest point in quadrant #1.
maxDistance(1) = distanceSquared;
xCorners(1) = colk;
yCorners(1) = rowk;
end
else
% It's in the upper right quadrant
if distanceSquared > maxDistance(2)
% Record the new furthest point in quadrant #2.
maxDistance(2) = distanceSquared;
xCorners(2) = colk;
yCorners(2) = rowk;
end
end
else
% It's in the bottom half.
if colk < xCentroid
% It's in the lower left quadrant
if distanceSquared > maxDistance(3)
% Record the new furthest point in quadrant #3.
maxDistance(3) = distanceSquared;
xCorners(3) = colk;
yCorners(3) = rowk;
end
else
% It's in the lower right quadrant
if distanceSquared > maxDistance(4)
% Record the new furthest point in quadrant #4.
maxDistance(4) = distanceSquared;
xCorners(4) = colk;
yCorners(4) = rowk;
end
end
end
end
% Display in command window.
xCorners
yCorners
figure;
% Display the original gray scale image.
hImage = imshow(binaryImage, []);
title('Binary Image', 'FontSize', fontSize);
hold on;
% Enlarge figure to full screen.
set(gcf, 'units','normalized','outerposition',[0 0 1 1]);
% Place markers at the corners
plot(xCorners, yCorners, 'rs', 'MarkerSize', 10, 'LineWidth', 3);
impixelinfo(hImage);
% Plot centroid again
plot(xCentroid, yCentroid, 'r+', 'MarkerSize', 30, 'LineWidth', 3);
Results:
  댓글 수: 6

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추가 답변 (2개)

Image Analyst
Image Analyst 2013년 4월 24일
Why not use hough() and look for line intersections? There is an example for it in the help.
  댓글 수: 1
Kal
Kal 2013년 4월 25일
There are so many imperfections on the edges, so it hough transform obtains all those small lines that make up the edges on the line.

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Jeff E
Jeff E 2013년 4월 24일
The following may be helpful in validating any solution you do end up finding. If the rectangles in your images are rotated to any significant degree, just change "diamond" into "disk" to get a more robust, but slightly more noisy result.
bw = im2bw(imread('w0lwro.jpg'));
bw = ~bwareaopen(~bw, 5000);
cmask = imclose(bw, strel('diamond', 20));
cornermask = cmask & ~bw;
cornermask = bwareaopen(cornermask, 50);
The result is a binary mask that should contain, or be very close to, your corners, either through corner point detection or hough transform as suggested by Image Analyst.

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