# recovery plane from 4 point imaging using calibration camera

I have a camera and its K matrix (calibration matrix) also I have image of plane, I know the real points of the 4 corners and thier correspondence pixel. I know how to compute the H matrix if z=0 (H is homography matrix between Image and the real plane). And Now I try to get the real point of the plane (3D point) with the rotation matrix and the transltion vector I follow this paper :Calibrating an Overhead Video Camera by Raul Rojas in section 3 - 3.3. My code is:

ImagePointsScreen=[16,8,1;505,55,1;505,248,1;44,301,1;];

RealPointsMirror=[0,0,1;9,0,1;9,6,1;0,6,1]; %Mirror
RealPointsScreen=[0,0,1;47.5,0,1;47.5,20,1;0,20,1];%Screen
imagesc(screenImage);
hold on
for i=1:4
drawBubble(ImagePointsScreen(i,1),ImagePointsScreen(i,2),1,'g',int2str(i),'r')
end

Points3DScreen=Get3DpointSurface(RealPointsScreen,ImagePointsScreen,'Screen');

figure
hold on
plot3(Points3DScreen(:,1),Points3DScreen(:,2),Points3DScreen(:,3));
for i=1:4
drawBubble(Points3DScreen(i,1),Points3DScreen(i,2),1,'g',int2str(i),'r')
end

function [ Points3D ] = Get3DpointSurface( RealPoints,ImagePoints,name)
M=zeros(8,9);

for i=1:4

M((i*2)-1,1:3)=-RealPoints(i,:);
M((i*2)-1,7:9)=RealPoints(i,:)*ImagePoints(i,1);
M(i*2,4:6)=-RealPoints(i,:);
M(i*2,7:9)=RealPoints(i,:)*ImagePoints(i,2);

end

[U S V] = svd(M);
X = V(:,end);
H(1,:)=X(1:3,1)';
H(2,:)=X(4:6,1)';
H(3,:)=X(7:9,1)';
K=[680.561906875074,0,360.536967117290;0,682.250270165388,249.568615725655;0,0,1;];

newRO=pinv(K)*H;
h1=newRO(1:3,1);
h2=newRO(1:3,2);

scaleFactor=(norm(h1)+norm(h2))/2;
newRO=newRO./scaleFactor;
r1=newRO(1:3,1);
r2=newRO(1:3,2);
r3=cross(r1,r2);
r3=r3/norm(r3);

R=[r1,r2,r3];

RInv=pinv(R);
O=-RInv*newRO(1:3,3);
M=K*[R,-R*O];
for i=1:4
res=pinv(M)* [ImagePoints(i,1),ImagePoints(i,2),1]';
res=res';
res=res*(1/res(1,4));
Points3D(i,:)=res';

end
Points3D(i+1,:)=Points3D(1,:);  %just add the first point to the end of the array for draw square

end


My result is :

Now I have two problem :

1.The point 1 is at (0,0,0) and this is not the real location

2.the points are upside down

What I am doing worng?

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Not really a programming question...Perhaps you can ask on SE photography, the SE mathematics, the SE signal processing or SE Audio & Video production. –  Rody Oldenhuis Aug 26 '12 at 20:20

A homography is normally the transform of a plane in two positions/rotations. The position in camera coordinates of a plane is normally called pose or extrinsic parameters

opencv has a solvePnP() function which uses Ransac to estimate the position of a known plane.

ps. Sorry don't know the equivalent matlab but Bouguet has a matlab version of the openCV 3D functions on his site

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Please I need a matlab solution –  Beno Oct 28 '12 at 19:15

I found the answer in the paper: Calibrating an Overhead Video Camera by Raul Rojas in section 3 - 3.3.

for the start: H=K^-1*H Given four points in the image and their known coordinates in the world, the matrix H can be recovered, up to a scaling factor . We know that the first two columns of the rotation matrix R must be the first two columns of the transformation matrix. Let us denote by h1, h2, and h3 the three columns of the matrix H.Due to the scaling factor we then have that xr1 = h1 and xr2 = h2 Since |r1| = 1, then x= |h1|/|r1| = |h1| and x = |h2|/|r2| = |h2|. We can thus compute the factor and eliminate it from the recovered matrix H. We just set H'= H/x In this way we recover the first two columns of the rotation matrix R. The third column of R can be found remembering that any column in a rotation matrix is the cross product of the other two columns (times the appropriate plus or minus sign). In particular r3 = r1 × r2 Therefore, we can recover from H the rotation matrix R. We can also recover the translation vector (the position of the camera in field coordinates). Just remember that h'3 = −R^t Therefore the position vector of the camera pin-hole t is given by t = −R^-1 h3

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