Biomedical Engineering Reference
In-Depth Information
A.
if (intensity
<
= Object Mean)
B.
Object Probability (intensity) = exp(-(intensity - Object
Mean)
2
/(2*(Object Std Deviation)
2
);
C.
else
D.
Object Probability (intensity) = 1.0;
E.
if((intensity
<
=background mean)
F.
Background Probability (intensity) =1 .0;
G.
else
H.
Background Probability (intensity) = exp(-(intensity -
Background Mean)
2
/(2*(Background Std Deviation)
2
);
(c)
For the entire image compute the probability map at each pixel.
7.
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