
Remove regions outside a range and find their centroids
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I'm analysing images of giant clam shells with the hope of automating the process of counting and measuring their daily growth lines. I've been trying to find the centroids of the regions but as the images are not consistent I'm not sure this will be generealisable. I am only interested in the white regions with width around 30-200 pixels. How can I remove the other regions and find the centres of these lines? If this seems like the incorrect approach I would welcome any suggestions. I've attached the original and binarised images below.
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Image Analyst
le 5 Juil 2023
Modifié(e) : Image Analyst
le 5 Juil 2023
If you want the bounding box width to be between 30 and 200, do this
labeledImage = bwlabel(mask);
% Measure bounding boxes.
props = regionprops(labeledImage, 'BoundingBox')
allBB = vertcat(props.BoundingBox);
% Widths are column 3
widths = allBB(:, 3);
% Find out which widths are in the range we want.
keeperIndexes = find((widths >= 30) & (widths <= 200));
% Get a new binary image with only those blobs meeting the criteria.
mask = ismember(mask, keeperIndexes);
% Now get centroids and bounding boxes of what's left.
props = regionprops(labeledImage, 'BoundingBox', 'Centroid')
allBB = vertcat(props.BoundingBox);
% Get centroids as a matrix of (x,y) coordinates.
xyCentroids = vertcat(props.Centroid)
It's a generic, general purpose demo of how to threshold an image to find blobs, and then measure things about the blobs, and extract certain blobs based on their areas or diameters.
These look like tree rings. There is a center at the University of Arizona that is a world leader in Dendrochronology (study of tree rings). See if they can help you in your research.

You can also check the File Exchange for submissions on Vessel or Ridge finding filters, like Frangi, Hessian, B-COSFIRE
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Image Analyst
le 7 Juil 2023
Yes it's possible to some degree, though not by using simple things like imbinarize(). And it won't be some short 200 line long program. To be robust the program will be much longer than that.
If there are indeed widths in the range 30-200, then the output mask from ismember should have them. I made a mistake though. The line of code should use the labeled image, not the mask.
mask = ismember(labeledImage, keeperIndexes);
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