How to quantify shape similarity between two vectors.
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I need to quanitfy how similarity between two spectral profile. I have looked at procrustes distance but it dosent work when spectrum is shifted on x axis. Is there a way to quanitfy this, ideally between 0 (no similairty) and 1 (perfect similarity) ?
x1 = 0:0.1:10;
Y1 = gaussmf(x1,[0.8 5 ]);
Y2 = gaussmf(x1,[0.8 3 ]);
Y3 = gaussmf(x1,[0.4 2 ]);
figure(1)
plot(x1,Y1, 'k','Linewidth',2)
hold on
plot(x1,Y2, 'b','Linewidth',2)
hold on
plot(x1,Y3, 'r','Linewidth',2)
legend(["A","B","C"])
figure(1)
In the toy example, A and B are very similar so that should have a high similairty index but A-C and B-C should have lower similarity.
Respuestas (3)
Shift the curves by their means first so that the means of all objects lie in the origin (0). This will remove translational differences between the objects.
Perhaps you could use correlation-based similarity?
x1 = 0:0.1:10;
Y1 = gaussmf(x1,[0.8 5 ]);
Y2 = gaussmf(x1,[0.8 3 ]);
Y3 = gaussmf(x1,[0.4 2 ]);
corrcoeff(Y2,Y1)
corrcoeff(Y2,Y3)
corrcoeff(Y1,Y3)
function coeff=corrcoeff(u,v)
coeff=max(xcorr(u,v))/norm(u)/norm(v);
end
Image Analyst
el 10 de Sept. de 2024
0 votos
See the Mathworks page on spectral signature matching:
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