## New answers tagged centroid

0

If you're referring to the fact that you get two black diamonds, that's because you're calling plot([circ]), which is equivalent to plot([(3, 1)]). Since you passed a tuple in a list, matplotlib interprets this as a two-dimensional y array with no x value passed, so it plots the points (0, 3) and (0, 1). (It uses zero as the x coordinate because there is ...

0

Since you have the centroid of the object in every frame, you can compute its velocity in pixels/frame by subtracting consecutive centroids.

0

I changed your code to the following:
CC=bwconncomp(Ibin,26);
PixelIdxList = CC.PixelIdxList;
maxval = numel(PixelIdxList{1});
index = 1;
for ii = 1:length(PixelIdxList)
number = numel(PixelIdxList{ii});
if number > maxval
maxval = number;
index = ii;
end
end
[y,x,z] = ind2sub(size(Ibin),PixelIdxList{index})
centroid = ...

0

If the centroids are predefined, then you are doing nearest-neighbor classification, not clustering. It's only clustering if the structure is not predefined.

-1

Not sure this belongs in the python forum, but you just need to compute the distance from each of your points to each centroid, and then assign each point to that centroid that is closest. You then have your clusters, though some may be empty (no guarantee that a centroid will have at least one data point closest to it). You can do this by iterating over all ...

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