www.gusucode.com > images 案例代码 matlab源码程序 > images/RoundObjectsExample.m

    %% Identifying Round Objects
% This example shows how to classify objects based on their roundness using
% |bwboundaries|, a boundary tracing routine.

% Copyright 1993-2015 The MathWorks, Inc. 


%% Step 1: Read Image
% Read in |pills_etc.png|.

RGB = imread('pillsetc.png');
imshow(RGB);

%% Step 2: Threshold the Image
% Convert the image to black and white in order to prepare for
% boundary tracing using |bwboundaries|.

I = rgb2gray(RGB);
bw = imbinarize(I);
imshow(bw)

%% Step 3: Remove the Noise
% Using morphology functions, remove pixels which do not belong to the
% objects of interest.

% remove all object containing fewer than 30 pixels
bw = bwareaopen(bw,30);

% fill a gap in the pen's cap
se = strel('disk',2);
bw = imclose(bw,se);

% fill any holes, so that regionprops can be used to estimate
% the area enclosed by each of the boundaries
bw = imfill(bw,'holes');

imshow(bw)

%% Step 4: Find the Boundaries
% Concentrate only on the exterior boundaries.  Option 'noholes' will
% accelerate the processing by preventing |bwboundaries| from searching 
% for inner contours.

[B,L] = bwboundaries(bw,'noholes');

% Display the label matrix and draw each boundary
imshow(label2rgb(L, @jet, [.5 .5 .5]))
hold on
for k = 1:length(B)
  boundary = B{k};
  plot(boundary(:,2), boundary(:,1), 'w', 'LineWidth', 2)
end

%% Step 5: Determine which Objects are Round
% Estimate each object's area and perimeter. Use these results
% to form a simple metric indicating the roundness of an object:
%
%  metric = 4*pi*area/perimeter^2.
% 
% This metric is equal to one only for a circle and it is less than one for 
% any other shape. The discrimination process can be controlled by setting
% an appropriate threshold. In this example use a threshold of 0.94 so
% that only the pills will be classified as round.
%
% Use |regionprops| to obtain estimates of the area for all of the objects.
% Notice that the label matrix returned by |bwboundaries| can be
% reused by |regionprops|.

stats = regionprops(L,'Area','Centroid');

threshold = 0.94;

% loop over the boundaries
for k = 1:length(B)

  % obtain (X,Y) boundary coordinates corresponding to label 'k'
  boundary = B{k};

  % compute a simple estimate of the object's perimeter
  delta_sq = diff(boundary).^2;    
  perimeter = sum(sqrt(sum(delta_sq,2)));
  
  % obtain the area calculation corresponding to label 'k'
  area = stats(k).Area;
  
  % compute the roundness metric
  metric = 4*pi*area/perimeter^2;
  
  % display the results
  metric_string = sprintf('%2.2f',metric);

  % mark objects above the threshold with a black circle
  if metric > threshold
    centroid = stats(k).Centroid;
    plot(centroid(1),centroid(2),'ko');
  end
  
  text(boundary(1,2)-35,boundary(1,1)+13,metric_string,'Color','y',...
       'FontSize',14,'FontWeight','bold');
  
end

title(['Metrics closer to 1 indicate that ',...
       'the object is approximately round']);