Reputation: 103
I am trying solving the equation , s m' = A[R|t]M'
i.e
m = K . T . M where m, K, M and last column of T [ R | t ] are known.
I want to obtain the values for each element of the 3*3 rotation matrix. I have.
This question was also answered here
But I could not understand how to get values for 3*3 rotation matrix after making the new set of equations each time, when we take new values for m and M.
m contains the coordinates of the projection point in pixels, I have 16 different points on the image for the pattern captured by the camera and have 16 set of values for each u and v.
m=np.array([u,v,1])
K is my intrinsic matrix/camera matrix/matrix of intrinsic parameters for the camera, I have the value for fx, fy (focal lengths) and cx, cy (principal point) as camera intrinsic matrix
K=np.matrix([ [fx, 0, cx, 0],
[ 0, fy, cy, 0],
[ 0, 0, 1, 0]])
T is the transformation to pass to the "world" coordinate system to the camera coordinate system ( extrinsic matrix,[ R | t ] ), I also have the values for Tx, Ty and Tz.
T= np.matrix([[x00, x01, x02, Tx],
[x10, x11, x12, Ty],
[x20, x21, x22, Tz],
[0 , 0 , 0 , 1 ]])
M is the homogeneous coordinate of a point in the Cartesian coordinate system "world" i.e the coordinates of a 3D point in the world coordinate space. I have the 16 points from the pattern therefore i have 16 different values for each X, Y, Z.
M=np.array([X,Y,Z,1])
My goal is to get the values for elements x00, x01, x02, x10, x11, x12, x20, x21, x22 for matrix T. could someone please help??
For more clarification:
Suppose for m matrix (the coordinates of the projection point in pixels) the value of u and v are:
u = [ 337, 337, 316, 317, 302, 302, 291, 292, 338, ...]
and
v =[ 487, 572, 477, 547, 470, 528, 465, 516, 598, ...]
i.e the coordinates of the first projection point in pixels are 337 (row number) and 487 (column number)
therefore,
for first set of equation, matrix, m will have values,
import sympy as sy
import numpy as np
# m = sy.Matrix([u, v, 1]
m = sy.Matrix([337, 487, 1])
,
for second set of equation, matrix, m will have values,
# m = sy.Matrix([u, v, 1]
m = sy.Matrix([337, 572, 1])
and soon...
for K matrix (matrix of intrinsic parameters) the values:
K = sy.Matrix([[711.629, 0, 496.220, 0],
[0, 712.682, 350.535, 0],
[0, 0, 0, 1]])
for M matrix ( the coordinates of a 3D points in the world coordinate space) the value for X,Y and Z are:
X = [4.25, 4.25, 5.32, 5.32, 6.27, 6.27, 7.28, 7.28, 4.20, ...]
Y = 0
Z = [0.63, 1.63, 0.63, 1.63, 0.59, 1.59, 0.60, 1.92, 2.92, ...]
for first set of equation, matrix M will be
# M=np.array([X,Y,Z,1])
M = sy.Matrix([0.63, 0, 4.25, 1])
,
for second set of equation, matrix, M will have values,
# M=np.array([X,Y,Z,1])
M = sy.Matrix([1.63, 0, 4.25, 1])
and soon...
for T matrix ( extrinsic matrix, [ R | t ]) we have value for Tx, Ty, Tz as 0, -1.35, 0 .Therefore, T matrix will be:
T = sy.Matrix([[x11, x12, x13, 0],
[x21, x22, x23, -1.32],
[x31, x32, x33, 0],
[0, 0, 0, 1]])
I need to make nine set of these matrix equations: m = K * T * M using different value for m and M so that I could calculate the values for 9 unknowns in T matrix out of these set of equations.
Upvotes: 3
Views: 2234
Reputation: 3264
Essentially, you have the matrix equation (using the notation of the OpenCV documentation):
A @ (R @ w + t) == m
Where A.shape == (3, 3)
, R.shape == (3, 3)
, w.shape == (3, n)
, t.shape == (3, 1)
, m.shape == (3, n)
, representing n
points in world coordinates w
and image coordinates m
.
This equation can be rearranged as
w.T @ R.T == (inv(A) @ m - t).T
where inv(A)
is the inverse of A
. The shape of the left- and right-hand sides is (n, 3)
. This has the format of a matrix equation, with 9 unknowns (in R.T) and n equations. In this form, you can feed into np.linalg.lstsq
for a least-squares solution - assuming that you have n >= 3
with sufficiently independent points.
Here is a demonstration with random numbers:
import numpy as np
# Setup test case
np.random.seed(1)
R = np.random.randint(-9, 9, size=(3, 3)).astype(np.float64)
t = np.array([1, 1.5, 2]).reshape(3, 1) # column vector
Rt = np.hstack([R, t]) # shape (3, 4)
A = np.diag([0.5, 0.5, 1.0]) # shape (3, 3)
n = 20 # number of points
# M: shape (4, n)
M = np.vstack([np.random.uniform(size=(3, n)), np.ones((1, n))])
m = A @ Rt @ M # m.shape == (3, n)
# Now try to reconstruct R, given A, M, t, and m.
w = M[:3, :] # world XYZ coordinates, shape (3, n)
# Matrix equation: A @ (R @ w + t) == m
# Equivalent to w.T @ R.T == (inv(A) @ m - t).T
RTfit, _, _, _ = np.linalg.lstsq(w.T, (np.linalg.inv(A) @ m - t).T, rcond=None)
Rfit = np.around(RTfit.T, 6)
print(f'Original R:\n{R}\nReconstructed R:\n{Rfit}')
Output:
Original R:
[[-4. 2. 3.]
[-1. 0. 2.]
[-4. 6. -9.]]
Reconstructed R:
[[-4. 2. 3.]
[-1. -0. 2.]
[-4. 6. -9.]]
Note that you could also use an exact solve using three data points (n=3
):
Rsolve = np.linalg.solve(w.T[:3], (np.linalg.inv(A) @ m[:, :3] - t).T).T
but in this case, you need to pick your three points carefully or it won't work.
Here is an attempt with your data:
t = np.array([[0, -1.32, 0]]).T
w = np.array([
[4.25, 4.25, 5.32, 5.32, 6.27, 6.27, 7.28, 7.28, 4.20],
np.zeros(9),
[0.63, 1.63, 0.63, 1.63, 0.59, 1.59, 0.60, 1.92, 2.92]
])
m = np.array([
[337, 337, 316, 317, 302, 302, 291, 292, 338],
[487, 572, 477, 547, 470, 528, 465, 516, 598],
np.ones(9)
])
A = np.array([
[711.629, 0, 496.220],
[712.682, 350.535, 0],
[0, 0, 1]
])
RTfit, _, _, _ = np.linalg.lstsq(w.T, (np.linalg.inv(A) @ m - t).T, rcond=None)
Rfit = np.around(RTfit.T, 6)
print(Rfit)
Output:
array([[-0.040938, 0. , -0.016044],
[ 0.448038, 0. , 0.52933 ],
[ 0.14251 , 0. , 0.127464]])
It cannot meaningfully solve the middle column of the R matrix because all Y values of the input were zero. (If you try this with np.linalg.solve
, you'll get a singular-matrix error.)
The fit is not particularly good, as evidenced by plotting m
and A @ (R @ w + t)
:
The mismatch implies that there is no R matrix possible that is consistent with the data. In your comment, you ask whether the R matrix is the most optimal solution. It is the optimal solution in matching the LHS and the RHS of the equation (w.T @ Rfit.T
versus (inv(A) @ m - t).T
).
Given the large mismatch in the above plot, it doesn't make much sense to speculate on the accuracy of the resulting R matrix. It is likely that there is a problem with the input data; the points (m, w), the t-vector, or the A matrix.
Upvotes: 3