Solving a linear equation using least-squares (Calibration Matrix)

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Hi,
I need to find the calibration matrix C and offset A in the equation:
F = A + CX
F is a [2x1] vector and X is [3x1] vector. These are known from experimental data.
The offset vector A is [2x1] and the calibration matrix C is [2x3].
I have multiple data such that F becomes a matrix of size [2xn] and X becomes a matrix of size [3xn].
I need to find a way to approximate matrices A and C using a least-squares approach.
It is not clear to me how to proceed however.
Thanks!

Respuesta aceptada

Matt J
Matt J el 8 de Mayo de 2019
W=[ones(1,n);X];
Z=F/W;
A=Z(:,1);
C=Z(:,2:end);
  1 comentario
Omar Alahmad
Omar Alahmad el 9 de Mayo de 2019
Thanks Matt, it seems to have done the job. Although I still do not have a complete understanding of how it worked. I will have to look a bit further.

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Más respuestas (1)

Matt J
Matt J el 8 de Mayo de 2019
Editada: Matt J el 9 de Mayo de 2019
Are these equations for projective transformations? If so, they are not really linear equations. They are accurate only up to some multiplicative factor. You would need to use methods from projective geometry like the DLT to solve it,

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