I am trying to get a global pose estimate from an image of four fiducials with known global positions using my webcam.
I have checked many stackexchange questions and a few papers and I cannot seem to get a a correct solution. The position numbers I do get out are repeatable but in no way linearly proportional to camera movement. FYI I am using C++ OpenCV 2.1.
At this link is pictured my coordinate systems and the test data used below.
% Input to solvePnP(): imagePoints = [ 481, 831; % [x, y] format 520, 504; 1114, 828; 1106, 507] objectPoints = [0.11, 1.15, 0; % [x, y, z] format 0.11, 1.37, 0; 0.40, 1.15, 0; 0.40, 1.37, 0] % camera intrinsics for Logitech C910 cameraMat = [1913.71011, 0.00000, 1311.03556; 0.00000, 1909.60756, 953.81594; 0.00000, 0.00000, 1.00000] distCoeffs = [0, 0, 0, 0, 0] % output of solvePnP(): tVec = [-0.3515; 0.8928; 0.1997] rVec = [2.5279; -0.09793; 0.2050] % using Rodrigues to convert back to rotation matrix: rMat = [0.9853, -0.1159, 0.1248; -0.0242, -0.8206, -0.5708; 0.1686, 0.5594, -0.8114]
So far, can anyone see anything wrong with these numbers? I would appreciate it if someone would check them in for example MatLAB (code above is m-file friendly).
From this point, I am unsure of how to get the global pose from rMat and tVec. From what I have read in this question, to get the pose from rMat and tVec is simply:
position = transpose(rMat) * tVec % matrix multiplication
However I suspect from other sources that I have read it is not that simple.
To get the position of the camera in real world coordinates, what do I need to do? As I am unsure if this is an implementation problem (however most likely a theory problem) I would like for someone who has used the solvePnP function successfully in OpenCV to answer this question, although any ideas are welcome too!
Thank you very much for your time.