Exemple #1
0
def uncertainty_pnp(points_2d, weights_2d, points_3d, camera_matrix):
    '''
    :param points_2d:           [pn,2]
    :param weights_2d:          [pn,3] wxx,wxy,wyy
    :param points_3d:           [pn,3]
    :param camera_matrix:       [3,3]
    :return:
    '''
    pn = points_2d.shape[0]
    assert (points_3d.shape[0] == pn and pn >= 4)

    try:
        dist_coeffs = uncertainty_pnp.dist_coeffs
    except:
        dist_coeffs = np.zeros(shape=[8, 1], dtype=np.float64)

    points_3d = points_3d.astype(np.float64)
    points_2d = points_2d.astype(np.float64)
    weights_2d = weights_2d.astype(np.float64)
    camera_matrix = camera_matrix.astype(np.float64)

    idxs = np.argsort(weights_2d[:, 0] + weights_2d[:, 1])[-4:]

    _, R_exp, t = cv2.solvePnP(np.expand_dims(points_3d[idxs, :], 0),
                               np.expand_dims(points_2d[idxs, :], 0),
                               camera_matrix,
                               dist_coeffs,
                               None,
                               None,
                               False,
                               flags=cv2.SOLVEPNP_P3P)

    if pn == 4:
        # no other points
        R, _ = cv2.Rodrigues(R_exp)
        Rt = np.concatenate([R, t], axis=-1)
        return Rt

    points_2d = np.ascontiguousarray(points_2d, np.float64)
    points_3d = np.ascontiguousarray(points_3d, np.float64)
    weights_2d = np.ascontiguousarray(weights_2d, np.float64)
    camera_matrix = np.ascontiguousarray(camera_matrix, np.float64)
    init_rt = np.ascontiguousarray(np.concatenate([R_exp, t], 0), np.float64)

    points_2d_ptr = ffi.cast('double*', points_2d.ctypes.data)
    points_3d_ptr = ffi.cast('double*', points_3d.ctypes.data)
    weights_3d_ptr = ffi.cast('double*', weights_2d.ctypes.data)
    camera_matrix_ptr = ffi.cast('double*', camera_matrix.ctypes.data)
    init_rt_ptr = ffi.cast('double*', init_rt.ctypes.data)
    result_rt = np.empty([6], np.float64)
    result_rt_ptr = ffi.cast('double*', result_rt.ctypes.data)

    lib.uncertainty_pnp(points_2d_ptr, points_3d_ptr, weights_3d_ptr,
                        camera_matrix_ptr, init_rt_ptr, result_rt_ptr, pn)

    R, _ = cv2.Rodrigues(result_rt[:3])
    Rt = np.concatenate([R, result_rt[3:, None]], axis=-1)
    return Rt
def uncertainty_pnp_v2(points_2d, covars, points_3d, camera_matrix, type='single'):
    '''
    :param points_2d:           [pn,2]
    :param covars:              [pn,2,2]
    :param points_3d:           [pn,3]
    :param camera_matrix:       [3,3]
    :return:
    '''
    pn=points_2d.shape[0]
    assert(points_3d.shape[0]==pn and pn>=4 and covars.shape[0]==pn)

    points_3d=points_3d.astype(np.float64)
    points_2d=points_2d.astype(np.float64)
    camera_matrix=camera_matrix.astype(np.float64)

    weights_2d=[]
    for pi in range(pn):
        weight=0.0
        if covars[pi,0,0]<1e-5:
            weights_2d.append(weight)
        else:
            weight=np.max(np.linalg.eigvals(covars[pi]))
            weights_2d.append(1.0/weight)
    weights_2d=np.asarray(weights_2d,np.float64)

    try:
        dist_coeffs = uncertainty_pnp.dist_coeffs
    except:
        dist_coeffs = np.zeros(shape=[8, 1], dtype=np.float64)

    idxs=np.argsort(weights_2d)[-4:]
    _, R_exp, t=cv2.solvePnP(np.expand_dims(points_3d[idxs,:],0),
                             np.expand_dims(points_2d[idxs,:],0),
                             camera_matrix,dist_coeffs,None,None,False,flags=cv2.SOLVEPNP_P3P)

    if pn==4:
        # no other points
        R, _ = cv2.Rodrigues(R_exp)
        Rt=np.concatenate([R, t], axis=-1)
        return Rt

    points_2d=np.ascontiguousarray(points_2d,np.float64)
    points_3d=np.ascontiguousarray(points_3d,np.float64)
    weights_2d=weights_2d[:,None]
    weights_2d=np.concatenate([weights_2d,np.zeros([pn,1]),weights_2d],1)
    weights_2d=np.ascontiguousarray(weights_2d,np.float64)
    camera_matrix=np.ascontiguousarray(camera_matrix,np.float64)
    init_rt=np.ascontiguousarray(np.concatenate([R_exp,t],0),np.float64)

    points_2d_ptr=ffi.cast('double*',points_2d.ctypes.data)
    points_3d_ptr=ffi.cast('double*',points_3d.ctypes.data)
    weights_3d_ptr=ffi.cast('double*',weights_2d.ctypes.data)
    camera_matrix_ptr=ffi.cast('double*',camera_matrix.ctypes.data)
    init_rt_ptr=ffi.cast('double*',init_rt.ctypes.data)
    result_rt=np.empty([6],np.float64)
    result_rt_ptr=ffi.cast('double*',result_rt.ctypes.data)

    lib.uncertainty_pnp(points_2d_ptr,points_3d_ptr,weights_3d_ptr,camera_matrix_ptr,init_rt_ptr,result_rt_ptr,pn)

    R, _ = cv2.Rodrigues(result_rt[:3])
    Rt = np.concatenate([R, result_rt[3:,None]], axis=-1)
    return Rt