def eval_intersection_polynomial(nodes1, nodes2, t): r"""Evaluates a parametric curve **on** an implicitized algebraic curve. Uses :func:`evaluate` to evaluate :math:`f_1(x, y)`, the implicitization of ``nodes1``. Then plugs ``t`` into the second parametric curve to get an ``x``- and ``y``-coordinate and evaluate the **intersection polynomial**: .. math:: g(t) = f_1\left(x_2(t), y_2(t)right) Args: nodes1 (numpy.ndarray): The nodes in the first curve. nodes2 (numpy.ndarray): The nodes in the second curve. t (float): The parameter along ``nodes2`` where we evaluate the function. Returns: float: The computed value of :math:`f_1(x_2(t), y_2(t))`. """ (x_val,), (y_val,) = _curve_helpers.evaluate_multi( nodes2, np.asfortranarray([t]) ) return evaluate(nodes1, x_val, y_val)
def evaluate_multi(self, s_vals): r"""Evaluate :math:`B(s)` for multiple points along the curve. This is done via a modified Horner's method (vectorized for each ``s``-value). .. doctest:: curve-eval-multi :options: +NORMALIZE_WHITESPACE >>> nodes = np.asfortranarray([ ... [0.0, 0.0, 0.0], ... [1.0, 2.0, 3.0], ... ]) >>> curve = bezier.Curve(nodes, degree=1) >>> curve <Curve (degree=1, dimension=3)> >>> s_vals = np.linspace(0.0, 1.0, 5) >>> curve.evaluate_multi(s_vals) array([[ 0. , 0. , 0. ], [ 0.25, 0.5 , 0.75], [ 0.5 , 1. , 1.5 ], [ 0.75, 1.5 , 2.25], [ 1. , 2. , 3. ]]) Args: s_vals (numpy.ndarray): Parameters along the curve (as a 1D array). Returns: numpy.ndarray: The points on the curve. As a two dimensional NumPy array, with the rows corresponding to each ``s`` value and the columns to the dimension. """ return _curve_helpers.evaluate_multi(self._nodes, s_vals)
def _points_check(self, nodes, pts_exponent=5): from bezier import _curve_helpers left, right = self._call_function_under_test(nodes) # Using the exponent means that ds = 1/2**exp, which # can be computed without roundoff. num_pts = 2**pts_exponent + 1 left_half = np.linspace(0.0, 0.5, num_pts) right_half = np.linspace(0.5, 1.0, num_pts) unit_interval = np.linspace(0.0, 1.0, num_pts) pairs = [(left, left_half), (right, right_half)] for sub_curve, half in pairs: # Make sure sub_curve([0, 1]) == curve(half) self.assertEqual( _curve_helpers.evaluate_multi(nodes, half), _curve_helpers.evaluate_multi(sub_curve, unit_interval), )
def __call__(self, s, t): r"""This computes :math:`F = B_1(s) - B_2(t)` and :math:`DF(s, t)`. .. note:: There is **almost** identical code in :func:`._newton_refine`, but that code can avoid computing the ``first_deriv1`` and ``first_deriv2`` nodes in cases that :math:`F(s, t) = 0` whereas this function assumes they have been given. In the case that :math:`DF(s, t)` is singular, the assumption is that the intersection has a multiplicity higher than one (i.e. the root is non-simple). **Near** a simple root, it must be the case that :math:`DF(s, t)` has non-zero determinant, so due to continuity, we assume the Jacobian will be invertible nearby. Args: s (float): The parameter where we'll compute :math:`B_1(s)` and :math:`DF(s, t)`. t (float): The parameter where we'll compute :math:`B_2(t)` and :math:`DF(s, t)`. Returns: Tuple[Optional[numpy.ndarray], numpy.ndarray]: Pair of * The LHS matrix ``DF``, a ``2 x 2`` array. If ``F == 0`` then this matrix won't be computed and :data:`None` will be returned. * The RHS vector ``F``, a ``2 x 1`` array. """ s_vals = np.asfortranarray([s]) b1_s = _curve_helpers.evaluate_multi(self.nodes1, s_vals) t_vals = np.asfortranarray([t]) b2_t = _curve_helpers.evaluate_multi(self.nodes2, t_vals) func_val = b1_s - b2_t if np.all(func_val == 0.0): return None, func_val else: jacobian = np.empty((2, 2), order="F") jacobian[:, :1] = _curve_helpers.evaluate_multi( self.first_deriv1, s_vals ) jacobian[:, 1:] = -_curve_helpers.evaluate_multi( self.first_deriv2, t_vals ) return jacobian, func_val
def intersect_curves(nodes1, nodes2): r"""Intersect two parametric B |eacute| zier curves. Args: nodes1 (numpy.ndarray): The nodes in the first curve. nodes2 (numpy.ndarray): The nodes in the second curve. Returns: numpy.ndarray: ``Nx2`` array of intersection parameters. Each row contains a pair of values :math:`s` and :math:`t` (each in :math:`\left[0, 1\right]`) such that the curves intersect: :math:`B_1(s) = B_2(t)`. Raises: NotImplementedError: If the "intersection polynomial" is all zeros -- which indicates coincident curves. """ nodes1 = _curve_helpers.full_reduce(nodes1) nodes2 = _curve_helpers.full_reduce(nodes2) num_nodes1, _ = nodes1.shape num_nodes2, _ = nodes2.shape swapped = False if num_nodes1 > num_nodes2: nodes1, nodes2 = nodes2, nodes1 swapped = True coeffs = normalize_polynomial(to_power_basis(nodes1, nodes2)) if np.all(coeffs == 0.0): raise NotImplementedError(_COINCIDENT_ERR) _check_non_simple(coeffs) t_vals = roots_in_unit_interval(coeffs) final_s = [] final_t = [] for t_val in t_vals: (x_val, y_val), = _curve_helpers.evaluate_multi(nodes2, np.asfortranarray([t_val])) s_val = locate_point(nodes1, x_val, y_val) if s_val is not None: _resolve_and_add(nodes1, s_val, final_s, nodes2, t_val, final_t) result = np.zeros((len(final_s), 2), order='F') if swapped: final_s, final_t = final_t, final_s result[:, 0] = final_s result[:, 1] = final_t return result
def __call__(self, s, t): r"""This computes :math:`DG^T G` and :math:`DG^T DG`. If :math:`DG^T DG` is not full rank, this means either :math:`DG` was not full rank or that it was, but with a relatively high condition number. So, in the case that :math:`DG^T DG` is singular, the assumption is that the intersection has a multiplicity higher than two. Args: s (float): The parameter where we'll compute :math:`G(s, t)` and :math:`DG(s, t)`. t (float): The parameter where we'll compute :math:`G(s, t)` and :math:`DG(s, t)`. Returns: Tuple[Optional[numpy.ndarray], Optional[numpy.ndarray]]: Pair of * The LHS matrix ``DG^T DG``, a ``2 x 2`` array. If ``G == 0`` then this matrix won't be computed and :data:`None` will be returned. * The RHS vector ``DG^T G``, a ``2 x 1`` array. """ s_vals = np.asfortranarray([s]) b1_s = _curve_helpers.evaluate_multi(self.nodes1, s_vals) b1_ds = _curve_helpers.evaluate_multi(self.first_deriv1, s_vals) t_vals = np.asfortranarray([t]) b2_t = _curve_helpers.evaluate_multi(self.nodes2, t_vals) b2_dt = _curve_helpers.evaluate_multi(self.first_deriv2, t_vals) func_val = np.empty((3, 1), order="F") func_val[:2, :] = b1_s - b2_t func_val[2, :] = _helpers.cross_product(b1_ds[:, 0], b2_dt[:, 0]) if np.all(func_val == 0.0): return None, func_val[:2, :] else: jacobian = np.empty((3, 2), order="F") jacobian[:2, :1] = b1_ds jacobian[:2, 1:] = -b2_dt if self.second_deriv1.size == 0: jacobian[2, 0] = 0.0 else: jacobian[2, 0] = _helpers.cross_product( _curve_helpers.evaluate_multi(self.second_deriv1, s_vals)[ :, 0 ], b2_dt[:, 0], ) if self.second_deriv2.size == 0: jacobian[2, 1] = 0.0 else: jacobian[2, 1] = _helpers.cross_product( b1_ds[:, 0], _curve_helpers.evaluate_multi(self.second_deriv2, t_vals)[ :, 0 ], ) modified_lhs = _helpers.matrix_product(jacobian.T, jacobian) modified_rhs = _helpers.matrix_product(jacobian.T, func_val) return modified_lhs, modified_rhs
def evaluate(self, s): r"""Evaluate :math:`B(s)` along the curve. This method acts as a (partial) inverse to :meth:`locate`. See :meth:`evaluate_multi` for more details. .. image:: ../../images/curve_evaluate.png :align: center .. doctest:: curve-eval :options: +NORMALIZE_WHITESPACE >>> nodes = np.asfortranarray([ ... [0.0, 0.625, 1.0], ... [0.0, 0.5 , 0.5], ... ]) >>> curve = bezier.Curve(nodes, degree=2) >>> curve.evaluate(0.75) array([[0.796875], [0.46875 ]]) .. testcleanup:: curve-eval import make_images make_images.curve_evaluate(curve) Args: s (float): Parameter along the curve. Returns: numpy.ndarray: The point on the curve (as a two dimensional NumPy array with a single column). """ return _curve_helpers.evaluate_multi( self._nodes, np.asfortranarray([s]) )
def _newton_refine(s, nodes1, t, nodes2): r"""Apply one step of 2D Newton's method. .. note:: There is also a Fortran implementation of this function, which will be used if it can be built. We want to use Newton's method on the function .. math:: F(s, t) = B_1(s) - B_2(t) to refine :math:`\left(s_{\ast}, t_{\ast}\right)`. Using this, and the Jacobian :math:`DF`, we "solve" .. math:: \left[\begin{array}{c} 0 \\ 0 \end{array}\right] \approx F\left(s_{\ast} + \Delta s, t_{\ast} + \Delta t\right) \approx F\left(s_{\ast}, t_{\ast}\right) + \left[\begin{array}{c c} B_1'\left(s_{\ast}\right) & - B_2'\left(t_{\ast}\right) \end{array}\right] \left[\begin{array}{c} \Delta s \\ \Delta t \end{array}\right] and refine with the component updates :math:`\Delta s` and :math:`\Delta t`. .. note:: This implementation assumes the curves live in :math:`\mathbf{R}^2`. For example, the curves .. math:: \begin{align*} B_1(s) &= \left[\begin{array}{c} 0 \\ 0 \end{array}\right] (1 - s)^2 + \left[\begin{array}{c} 2 \\ 4 \end{array}\right] 2s(1 - s) + \left[\begin{array}{c} 4 \\ 0 \end{array}\right] s^2 \\ B_2(t) &= \left[\begin{array}{c} 2 \\ 0 \end{array}\right] (1 - t) + \left[\begin{array}{c} 0 \\ 3 \end{array}\right] t \end{align*} intersect at the point :math:`B_1\left(\frac{1}{4}\right) = B_2\left(\frac{1}{2}\right) = \frac{1}{2} \left[\begin{array}{c} 2 \\ 3 \end{array}\right]`. However, starting from the wrong point we have .. math:: \begin{align*} F\left(\frac{3}{8}, \frac{1}{4}\right) &= \frac{1}{8} \left[\begin{array}{c} 0 \\ 9 \end{array}\right] \\ DF\left(\frac{3}{8}, \frac{1}{4}\right) &= \left[\begin{array}{c c} 4 & 2 \\ 2 & -3 \end{array}\right] \\ \Longrightarrow \left[\begin{array}{c} \Delta s \\ \Delta t \end{array}\right] &= \frac{9}{64} \left[\begin{array}{c} -1 \\ 2 \end{array}\right]. \end{align*} .. image:: ../images/newton_refine1.png :align: center .. testsetup:: newton-refine1, newton-refine2, newton-refine3 import numpy as np import bezier from bezier._intersection_helpers import newton_refine machine_eps = np.finfo(np.float64).eps def realroots(*coeffs): all_roots = np.roots(coeffs) return all_roots[np.where(all_roots.imag == 0.0)].real .. doctest:: newton-refine1 >>> nodes1 = np.asfortranarray([ ... [0.0, 2.0, 4.0], ... [0.0, 4.0, 0.0], ... ]) >>> nodes2 = np.asfortranarray([ ... [2.0, 0.0], ... [0.0, 3.0], ... ]) >>> s, t = 0.375, 0.25 >>> new_s, new_t = newton_refine(s, nodes1, t, nodes2) >>> 64.0 * (new_s - s) -9.0 >>> 64.0 * (new_t - t) 18.0 .. testcleanup:: newton-refine1 import make_images curve1 = bezier.Curve(nodes1, degree=2) curve2 = bezier.Curve(nodes2, degree=1) make_images.newton_refine1(s, new_s, curve1, t, new_t, curve2) For "typical" curves, we converge to a solution quadratically. This means that the number of correct digits doubles every iteration (until machine precision is reached). .. image:: ../images/newton_refine2.png :align: center .. doctest:: newton-refine2 >>> nodes1 = np.asfortranarray([ ... [0.0, 0.25, 0.5, 0.75, 1.0], ... [0.0, 2.0 , -2.0, 2.0 , 0.0], ... ]) >>> nodes2 = np.asfortranarray([ ... [0.0, 0.25, 0.5, 0.75, 1.0], ... [1.0, 0.5 , 0.5, 0.5 , 0.0], ... ]) >>> # The expected intersection is the only real root of >>> # 28 s^3 - 30 s^2 + 9 s - 1. >>> expected, = realroots(28, -30, 9, -1) >>> s_vals = [0.625, None, None, None, None] >>> t = 0.625 >>> np.log2(abs(expected - s_vals[0])) -4.399... >>> s_vals[1], t = newton_refine(s_vals[0], nodes1, t, nodes2) >>> np.log2(abs(expected - s_vals[1])) -7.901... >>> s_vals[2], t = newton_refine(s_vals[1], nodes1, t, nodes2) >>> np.log2(abs(expected - s_vals[2])) -16.010... >>> s_vals[3], t = newton_refine(s_vals[2], nodes1, t, nodes2) >>> np.log2(abs(expected - s_vals[3])) -32.110... >>> s_vals[4], t = newton_refine(s_vals[3], nodes1, t, nodes2) >>> np.allclose(s_vals[4], expected, rtol=6 * machine_eps, atol=0.0) True .. testcleanup:: newton-refine2 import make_images curve1 = bezier.Curve(nodes1, degree=4) curve2 = bezier.Curve(nodes2, degree=4) make_images.newton_refine2(s_vals, curve1, curve2) However, when the intersection occurs at a point of tangency, the convergence becomes linear. This means that the number of correct digits added each iteration is roughly constant. .. image:: ../images/newton_refine3.png :align: center .. doctest:: newton-refine3 >>> nodes1 = np.asfortranarray([ ... [0.0, 0.5, 1.0], ... [0.0, 1.0, 0.0], ... ]) >>> nodes2 = np.asfortranarray([ ... [0.0, 1.0], ... [0.5, 0.5], ... ]) >>> expected = 0.5 >>> s_vals = [0.375, None, None, None, None, None] >>> t = 0.375 >>> np.log2(abs(expected - s_vals[0])) -3.0 >>> s_vals[1], t = newton_refine(s_vals[0], nodes1, t, nodes2) >>> np.log2(abs(expected - s_vals[1])) -4.0 >>> s_vals[2], t = newton_refine(s_vals[1], nodes1, t, nodes2) >>> np.log2(abs(expected - s_vals[2])) -5.0 >>> s_vals[3], t = newton_refine(s_vals[2], nodes1, t, nodes2) >>> np.log2(abs(expected - s_vals[3])) -6.0 >>> s_vals[4], t = newton_refine(s_vals[3], nodes1, t, nodes2) >>> np.log2(abs(expected - s_vals[4])) -7.0 >>> s_vals[5], t = newton_refine(s_vals[4], nodes1, t, nodes2) >>> np.log2(abs(expected - s_vals[5])) -8.0 .. testcleanup:: newton-refine3 import make_images curve1 = bezier.Curve(nodes1, degree=2) curve2 = bezier.Curve(nodes2, degree=1) make_images.newton_refine3(s_vals, curve1, curve2) Unfortunately, the process terminates with an error that is not close to machine precision :math:`\varepsilon` when :math:`\Delta s = \Delta t = 0`. .. testsetup:: newton-refine3-continued import numpy as np import bezier from bezier._intersection_helpers import newton_refine nodes1 = np.asfortranarray([ [0.0, 0.5, 1.0], [0.0, 1.0, 0.0], ]) nodes2 = np.asfortranarray([ [0.0, 1.0], [0.5, 0.5], ]) .. doctest:: newton-refine3-continued >>> s1 = t1 = 0.5 - 0.5**27 >>> np.log2(0.5 - s1) -27.0 >>> s2, t2 = newton_refine(s1, nodes1, t1, nodes2) >>> s2 == t2 True >>> np.log2(0.5 - s2) -28.0 >>> s3, t3 = newton_refine(s2, nodes1, t2, nodes2) >>> s3 == t3 == s2 True Due to round-off near the point of tangency, the final error resembles :math:`\sqrt{\varepsilon}` rather than machine precision as expected. .. note:: The following is not implemented in this function. It's just an exploration on how the shortcomings might be addressed. However, this can be overcome. At the point of tangency, we want :math:`B_1'(s) \parallel B_2'(t)`. This can be checked numerically via .. math:: B_1'(s) \times B_2'(t) = 0. For the last example (the one that converges linearly), this is .. math:: 0 = \left[\begin{array}{c} 1 \\ 2 - 4s \end{array}\right] \times \left[\begin{array}{c} 1 \\ 0 \end{array}\right] = 4 s - 2. With this, we can modify Newton's method to find a zero of the over-determined system .. math:: G(s, t) = \left[\begin{array}{c} B_0(s) - B_1(t) \\ B_1'(s) \times B_2'(t) \end{array}\right] = \left[\begin{array}{c} s - t \\ 2 s (1 - s) - \frac{1}{2} \\ 4 s - 2\end{array}\right]. Since :math:`DG` is :math:`3 \times 2`, we can't invert it. However, we can find a least-squares solution: .. math:: \left(DG^T DG\right) \left[\begin{array}{c} \Delta s \\ \Delta t \end{array}\right] = -DG^T G. This only works if :math:`DG` has full rank. In this case, it does since the submatrix containing the first and last rows has rank two: .. math:: DG = \left[\begin{array}{c c} 1 & -1 \\ 2 - 4 s & 0 \\ 4 & 0 \end{array}\right]. Though this avoids a singular system, the normal equations have a condition number that is the square of the condition number of the matrix. Starting from :math:`s = t = \frac{3}{8}` as above: .. testsetup:: newton-refine4 import numpy as np from bezier import _helpers def modified_update(s, t): minus_G = np.asfortranarray([ [t - s], [0.5 - 2.0 * s * (1.0 - s)], [2.0 - 4.0 * s], ]) DG = np.asfortranarray([ [1.0, -1.0], [2.0 - 4.0 * s, 0.0], [4.0, 0.0], ]) DG_t = np.asfortranarray(DG.T) LHS = _helpers.matrix_product(DG_t, DG) RHS = _helpers.matrix_product(DG_t, minus_G) delta_params = np.linalg.solve(LHS, RHS) delta_s, delta_t = delta_params.flatten() return s + delta_s, t + delta_t .. doctest:: newton-refine4 >>> s0, t0 = 0.375, 0.375 >>> np.log2(0.5 - s0) -3.0 >>> s1, t1 = modified_update(s0, t0) >>> s1 == t1 True >>> 1040.0 * s1 519.0 >>> np.log2(0.5 - s1) -10.022... >>> s2, t2 = modified_update(s1, t1) >>> s2 == t2 True >>> np.log2(0.5 - s2) -31.067... >>> s3, t3 = modified_update(s2, t2) >>> s3 == t3 == 0.5 True Args: s (float): Parameter of a near-intersection along the first curve. nodes1 (numpy.ndarray): Nodes of first curve forming intersection. t (float): Parameter of a near-intersection along the second curve. nodes2 (numpy.ndarray): Nodes of second curve forming intersection. Returns: Tuple[float, float]: The refined parameters from a single Newton step. Raises: ValueError: If the Jacobian is singular at ``(s, t)``. """ # NOTE: We form -F(s, t) since we want to solve -DF^{-1} F(s, t). func_val = _curve_helpers.evaluate_multi( nodes2, np.asfortranarray([t]) ) - _curve_helpers.evaluate_multi(nodes1, np.asfortranarray([s])) if np.all(func_val == 0.0): # No refinement is needed. return s, t # NOTE: This assumes the curves are 2D. jac_mat = np.empty((2, 2), order="F") jac_mat[:, :1] = _curve_helpers.evaluate_hodograph(s, nodes1) jac_mat[:, 1:] = -_curve_helpers.evaluate_hodograph(t, nodes2) # Solve the system. singular, delta_s, delta_t = _helpers.solve2x2(jac_mat, func_val[:, 0]) if singular: raise ValueError("Jacobian is singular.") return s + delta_s, t + delta_t