Files
OrcaSlicer/deps_src/libigl/igl/copyleft/quadprog.cpp
Donovan Baarda dc5897d7b5 Update eigen to v5.0.1 and libigl to v2.6.0. (#11311)
* Update eigen from v3.3.7 to v5.0.1.

This updates eigen from v3.3.7 released on  December 11, 2018-12-11 to v5.0.1
released on 2025-11-11. There have be a large number of bug-fixes,
optimizations, and improvements between these releases. See the details at;

https://gitlab.com/libeigen/eigen/-/releases

It retains the previous custom minimal `CMakeLists.txt`, and adds a
README-OrcaSlicer.md that explains what version and parts of the upstream
eigen release have been included, and where the full release can be found.

* Update libigl from v2.0.0 (or older) to v2.6.0.

This updates libigl from what was probably v2.0.0 released on 2018-10-16 to
v2.6.0 released on 2025-05-15. It's possible the old version was even older
than that but there is no version indicators in the code and I ran out of
patience identifying missing changes and only went back as far as v2.0.0.

There have been a large number of bug-fixes, optimizations, and improvements
between these versions. See the following for details;

https://github.com/libigl/libigl/releases

I retained the minimal custom `CMakeLists.txt`, added `README.md` from the
libigl distribution which identifies the version, and added a
README-OrcaSlicer.md that details the version and parts that have been
included.

* Update libslic3r for libigl v2.6.0 changes.

This updates libslic3r for all changes moving to eigen v5.0.1 and libigl
v2.6.0. Despite the large number of updates to both dependencies, no changes
were required for the eigen update, and only one change was required for the
libigl update.

For libigl, `igl::Hit` was changed to a template taking the Scalar type to
use. Previously it was hard-coded to `float`, so to minimize possible impact
I've updated all places it is used from `igl::Hit` to `igl::Hit<float>`.

* Add compiler option `-DNOMINMAX` for libigl with MSVC.

MSVC by default defines `min(()` and `max()` macros that break
`std::numeric_limits<>::max()`. The upstream cmake that we don't include
adds `-DNOMINMAX` for the libigl module when compiling with MSVC, so we need
to add the same thing here.

* Fix src/libslic3r/TriangleMeshDeal.cpp for the unmodified upstream libigl.

This fixes `TriangleMeshDeal.cpp` to work with the unmodified upstream
libigl v2.6.0. loop.{h,cpp} implementation.

This file and feature was added in PR "BBS Port: Mesh Subdivision" (#12150)
which included changes to `loop.{h,cpp}` in the old version of libigl. This PR
avoids modifying the included dependencies, and uses the updated upstream
versions of those files without any modifications, which requires fixing
TriangleMeshDeal.cpp to work with them.

In particular, the modifications made to `loop.{h,cpp}` included changing the
return type from void to bool, adding additional validation checking of the
input meshes, and returning false if they failed validation. These added
checks looked unnecessary and would only have caught problems if the input
mesh was very corrupt.

To make `TriangleMeshDeal.cpp` work without this built-in checking
functionality, I removed checking/handling of any `false` return value.

There was also a hell of a lot of redundant copying and casting back and forth
between float and double, so I cleaned that up. The input and output meshs use
floats for the vertexes, and there would be no accuracy benefits from casting
to and from doubles for the simple weighted average operations done by
igl::loop(). So this just uses `Eigen:Map` to use the original input mesh
vertex data directly without requiring any copy or casting.

* Move eigen from included `deps_src` to externaly fetched `deps`.

This copys what PrusaSlicer did and moved it from an included dependency under
`deps_src` to an externaly fetched dependency under `deps`. This requires
updating some `CMakeList.txt` configs and removing the old and obsolete
`cmake/modules/FindEigen3.cmake`. The details of when this was done in
PrusaSlicer and the followup fixes are at;

* 21116995d7
* https://github.com/prusa3d/PrusaSlicer/issues/13608
* https://github.com/prusa3d/PrusaSlicer/pull/13609
* e3c277b9ee

For some reason I don't fully understand this also required fixing
`src/slic3r/GUI/GUI_App.cpp` by adding `#include <boost/nowide/cstdio.hpp>` to
fix an `error: ‘remove’ is not a member of ‘boost::nowide'`. The main thing I
don't understand is how it worked before. Note that this include is in the
PrusaSlicer version of this file, but it also significantly deviates from what
is currently in OrcaSlicer in many other ways.

* Whups... I missed adding the deps/Eigen/Eigen.cmake file...

* Tidy some whitespace indenting in CMakeLists.txt.

* Ugh... tabs indenting needing fixes.

* Change the include order of deps/Eigen.

It turns out that although Boost includes some references to Eigen, Eigen also
includes some references to Boost for supporting some of it's additional
numeric types.

I don't think it matters much since we are not using these features, but I
think technically its more correct to say Eigen depends on Boost than the
other way around, so I've re-ordered them.

* Add source for Eigen 5.0.1 download to flatpak yml config.

* Add explicit `DEPENDS dep_Boost to deps/Eigen.

I missed this before. This ensures we don't rely on include orders to make
sure Boost is installed before we configure Eigen.

* Add `DEPENDS dep_Boost dep_GMP dep_MPFR` to deps/Eigen.

It turns out Eigen can also use GMP and MPFR for multi-precision and
multi-precision-rounded numeric types if they are available.

Again, I don't think we are using these so it doesn't really matter, but it is
technically correct and ensures they are there if we ever do need them.

* Fix deps DEPENDENCY ordering for GMP, MPFR, Eigen, and CGAL.

I think this is finally correct. Apparently CGAL also optionally depends on
Eigen, so the correct dependency order from lowest to highest is GMP, MPFR, Eigen, and CGAL.

---------

Co-authored-by: Donovan Baarda <dbaarda@google.com>
Co-authored-by: Noisyfox <timemanager.rick@gmail.com>
2026-05-12 15:09:13 +08:00

623 lines
16 KiB
C++

#include "quadprog.h"
#include "../matlab_format.h"
#include <vector>
#include <iostream>
#include <cstdio>
/*
FILE eiquadprog.hh
NOTE: this is a modified of uQuadProg++ package, working with Eigen data structures.
uQuadProg++ is itself a port made by Angelo Furfaro of QuadProg++ originally developed by
Luca Di Gaspero, working with ublas data structures.
The quadprog_solve() function implements the algorithm of Goldfarb and Idnani
for the solution of a (convex) Quadratic Programming problem
by means of a dual method.
The problem is in the form:
min 0.5 * x G x + g0 x
s.t.
CE^T x + ce0 = 0
CI^T x + ci0 >= 0
The matrix and vectors dimensions are as follows:
G: n * n
g0: n
CE: n * p
ce0: p
CI: n * m
ci0: m
x: n
The function will return the cost of the solution written in the x vector or
std::numeric_limits::infinity() if the problem is infeasible. In the latter case
the value of the x vector is not correct.
References: D. Goldfarb, A. Idnani. A numerically stable dual method for solving
strictly convex quadratic programs. Mathematical Programming 27 (1983) pp. 1-33.
Notes:
1. pay attention in setting up the vectors ce0 and ci0.
If the constraints of your problem are specified in the form
A^T x = b and C^T x >= d, then you should set ce0 = -b and ci0 = -d.
2. The matrix G is modified within the function since it is used to compute
the G = L^T L cholesky factorization for further computations inside the function.
If you need the original matrix G you should make a copy of it and pass the copy
to the function.
The author will be grateful if the researchers using this software will
acknowledge the contribution of this modified function and of Di Gaspero's
original version in their research papers.
LICENSE
Copyright (2010) Gael Guennebaud
Copyright (2008) Angelo Furfaro
Copyright (2006) Luca Di Gaspero
This file is a porting of QuadProg++ routine, originally developed
by Luca Di Gaspero, exploiting uBlas data structures for vectors and
matrices instead of native C++ array.
uquadprog is free software; you can redistribute it and/or modify
it under the terms of the GNU General Public License as published by
the Free Software Foundation; either version 2 of the License, or
(at your option) any later version.
uquadprog is distributed in the hope that it will be useful,
but WITHOUT ANY WARRANTY; without even the implied warranty of
MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
GNU General Public License for more details.
You should have received a copy of the GNU General Public License
along with uquadprog; if not, write to the Free Software
Foundation, Inc., 51 Franklin St, Fifth Floor, Boston, MA 02110-1301 USA
*/
#include <Eigen/Dense>
IGL_INLINE bool igl::copyleft::quadprog(
const Eigen::MatrixXd & G,
const Eigen::VectorXd & g0,
const Eigen::MatrixXd & CE,
const Eigen::VectorXd & ce0,
const Eigen::MatrixXd & CI,
const Eigen::VectorXd & ci0,
Eigen::VectorXd& x)
{
using namespace Eigen;
typedef double Scalar;
#ifdef TRACE_SOLVER
const auto print_ivector= [](const char* name, const Eigen::MatrixXi & A, int /*n*/)
{
std::cout<<igl::matlab_format(A,name)<<std::endl;
};
const auto print_matrix = [](const char* name, const Eigen::MatrixXd & A, int /*n*/)
{
std::cout<<igl::matlab_format(A,name)<<std::endl;
};
const auto print_vector = [](const char* name, const Eigen::VectorXd & v, int /*n*/)
{
std::cout<<igl::matlab_format(v,name)<<std::endl;
};
#endif
const auto distance = [](Scalar a, Scalar b)->Scalar
{
Scalar a1, b1, t;
a1 = std::abs(a);
b1 = std::abs(b);
if (a1 > b1)
{
t = (b1 / a1);
return a1 * std::sqrt(1.0 + t * t);
}
else
if (b1 > a1)
{
t = (a1 / b1);
return b1 * std::sqrt(1.0 + t * t);
}
return a1 * std::sqrt(2.0);
};
const auto compute_d = [](VectorXd &d, const MatrixXd& J, const VectorXd& np)
{
d = J.adjoint() * np;
};
const auto update_z =
[](VectorXd& z, const MatrixXd& J, const VectorXd& d, int iq)
{
z = J.rightCols(z.size()-iq) * d.tail(d.size()-iq);
};
const auto update_r =
[](const MatrixXd& R, VectorXd& r, const VectorXd& d, int iq)
{
r.head(iq) =
R.topLeftCorner(iq,iq).triangularView<Upper>().solve(d.head(iq));
};
const auto add_constraint = [&distance](
MatrixXd& R,
MatrixXd& J,
VectorXd& d,
int& iq,
double& R_norm)->bool
{
int n=J.rows();
#ifdef TRACE_SOLVER
std::cerr << "Add constraint " << iq << '/';
#endif
int j, k;
double cc, ss, h, t1, t2, xny;
/* we have to find the Givens rotation which will reduce the element
d(j) to zero.
if it is already zero we don't have to do anything, except of
decreasing j */
for (j = n - 1; j >= iq + 1; j--)
{
/* The Givens rotation is done with the matrix (cc cs, cs -cc).
If cc is one, then element (j) of d is zero compared with element
(j - 1). Hence we don't have to do anything.
If cc is zero, then we just have to switch column (j) and column (j - 1)
of J. Since we only switch columns in J, we have to be careful how we
update d depending on the sign of gs.
Otherwise we have to apply the Givens rotation to these columns.
The i - 1 element of d has to be updated to h. */
cc = d(j - 1);
ss = d(j);
h = distance(cc, ss);
if (h == 0.0)
continue;
d(j) = 0.0;
ss = ss / h;
cc = cc / h;
if (cc < 0.0)
{
cc = -cc;
ss = -ss;
d(j - 1) = -h;
}
else
d(j - 1) = h;
xny = ss / (1.0 + cc);
for (k = 0; k < n; k++)
{
t1 = J(k,j - 1);
t2 = J(k,j);
J(k,j - 1) = t1 * cc + t2 * ss;
J(k,j) = xny * (t1 + J(k,j - 1)) - t2;
}
}
/* update the number of constraints added*/
iq++;
/* To update R we have to put the iq components of the d vector
into column iq - 1 of R
*/
R.col(iq-1).head(iq) = d.head(iq);
#ifdef TRACE_SOLVER
std::cerr << iq << std::endl;
#endif
if (std::abs(d(iq - 1)) <= std::numeric_limits<double>::epsilon() * R_norm)
{
// problem degenerate
return false;
}
R_norm = std::max<double>(R_norm, std::abs(d(iq - 1)));
return true;
};
const auto delete_constraint = [&distance](
MatrixXd& R,
MatrixXd& J,
VectorXi& A,
VectorXd& u,
int p,
int& iq,
int l)
{
int n = R.rows();
#ifdef TRACE_SOLVER
std::cerr << "Delete constraint " << l << ' ' << iq;
#endif
int i, j, k, qq = -1;
double cc, ss, h, xny, t1, t2;
/* Find the index qq for active constraint l to be removed */
for (i = p; i < iq; i++)
if (A(i) == l)
{
qq = i;
break;
}
/* remove the constraint from the active set and the duals */
for (i = qq; i < iq - 1; i++)
{
A(i) = A(i + 1);
u(i) = u(i + 1);
R.col(i) = R.col(i+1);
}
A(iq - 1) = A(iq);
u(iq - 1) = u(iq);
A(iq) = 0;
u(iq) = 0.0;
for (j = 0; j < iq; j++)
R(j,iq - 1) = 0.0;
/* constraint has been fully removed */
iq--;
#ifdef TRACE_SOLVER
std::cerr << '/' << iq << std::endl;
#endif
if (iq == 0)
return;
for (j = qq; j < iq; j++)
{
cc = R(j,j);
ss = R(j + 1,j);
h = distance(cc, ss);
if (h == 0.0)
continue;
cc = cc / h;
ss = ss / h;
R(j + 1,j) = 0.0;
if (cc < 0.0)
{
R(j,j) = -h;
cc = -cc;
ss = -ss;
}
else
R(j,j) = h;
xny = ss / (1.0 + cc);
for (k = j + 1; k < iq; k++)
{
t1 = R(j,k);
t2 = R(j + 1,k);
R(j,k) = t1 * cc + t2 * ss;
R(j + 1,k) = xny * (t1 + R(j,k)) - t2;
}
for (k = 0; k < n; k++)
{
t1 = J(k,j);
t2 = J(k,j + 1);
J(k,j) = t1 * cc + t2 * ss;
J(k,j + 1) = xny * (J(k,j) + t1) - t2;
}
}
};
int i, k, l; /* indices */
int ip, me, mi;
int n=g0.size(); int p=ce0.size(); int m=ci0.size();
MatrixXd R(G.rows(),G.cols()), J(G.rows(),G.cols());
LLT<MatrixXd,Lower> chol(G.cols());
VectorXd s(m+p), z(n), r(m + p), d(n), np(n), u(m + p);
VectorXd x_old(n), u_old(m + p);
#ifdef TRACE_SOLVER
double f_value;
#endif
double psi, c1, c2, sum, ss, R_norm;
const double inf = std::numeric_limits<double>::infinity();
double t, t1, t2; /* t is the step length, which is the minimum of the partial step length t1
* and the full step length t2 */
VectorXi A(m + p), A_old(m + p), iai(m + p);
int iq;
std::vector<bool> iaexcl(m + p);
me = p; /* number of equality constraints */
mi = m; /* number of inequality constraints */
/*
* Preprocessing phase
*/
/* compute the trace of the original matrix G */
c1 = G.trace();
/* decompose the matrix G in the form LL^T */
chol.compute(G);
/* initialize the matrix R */
d.setZero();
R.setZero();
R_norm = 1.0; /* this variable will hold the norm of the matrix R */
/* compute the inverse of the factorized matrix G^-1, this is the initial value for H */
// J = L^-T
J.setIdentity();
J = chol.matrixU().solve(J);
c2 = J.trace();
#ifdef TRACE_SOLVER
print_matrix("J", J, n);
#endif
/* c1 * c2 is an estimate for cond(G) */
/*
* Find the unconstrained minimizer of the quadratic form 0.5 * x G x + g0 x
* this is a feasible point in the dual space
* x = G^-1 * g0
*/
x = chol.solve(g0);
x = -x;
/* and compute the current solution value */
#ifdef TRACE_SOLVER
f_value = 0.5 * g0.dot(x);
std::cerr << "Unconstrained solution: " << f_value << std::endl;
print_vector("x", x, n);
#endif
/* Add equality constraints to the working set A */
iq = 0;
for (i = 0; i < me; i++)
{
np = CE.col(i);
compute_d(d, J, np);
update_z(z, J, d, iq);
update_r(R, r, d, iq);
#ifdef TRACE_SOLVER
print_matrix("R", R, iq);
print_vector("z", z, n);
print_vector("r", r, iq);
print_vector("d", d, n);
#endif
/* compute full step length t2: i.e., the minimum step in primal space s.t. the contraint
becomes feasible */
t2 = 0.0;
if (std::abs(z.dot(z)) > std::numeric_limits<double>::epsilon()) // i.e. z != 0
t2 = (-np.dot(x) - ce0(i)) / z.dot(np);
x += t2 * z;
/* set u = u+ */
u(iq) = t2;
u.head(iq) -= t2 * r.head(iq);
/* compute the new solution value */
#ifdef TRACE_SOLVER
f_value += 0.5 * (t2 * t2) * z.dot(np);
#endif
A(i) = -i - 1;
if (!add_constraint(R, J, d, iq, R_norm))
{
// FIXME: it should raise an error
// Equality constraints are linearly dependent
return false;
}
}
/* set iai = K \ A */
for (i = 0; i < mi; i++)
iai(i) = i;
l1:
#ifdef TRACE_SOLVER
print_vector("x", x, n);
#endif
/* step 1: choose a violated constraint */
for (i = me; i < iq; i++)
{
ip = A(i);
iai(ip) = -1;
}
/* compute s(x) = ci^T * x + ci0 for all elements of K \ A */
ss = 0.0;
psi = 0.0; /* this value will contain the sum of all infeasibilities */
ip = 0; /* ip will be the index of the chosen violated constraint */
for (i = 0; i < mi; i++)
{
iaexcl[i] = true;
sum = CI.col(i).dot(x) + ci0(i);
s(i) = sum;
psi += std::min(0.0, sum);
}
#ifdef TRACE_SOLVER
print_vector("s", s, mi);
#endif
if (std::abs(psi) <= mi * std::numeric_limits<double>::epsilon() * c1 * c2* 100.0)
{
/* numerically there are not infeasibilities anymore */
return true;
}
/* save old values for u, x and A */
u_old.head(iq) = u.head(iq);
A_old.head(iq) = A.head(iq);
x_old = x;
l2: /* Step 2: check for feasibility and determine a new S-pair */
for (i = 0; i < mi; i++)
{
if (s(i) < ss && iai(i) != -1 && iaexcl[i])
{
ss = s(i);
ip = i;
}
}
if (ss >= 0.0)
{
return true;
}
/* set np = n(ip) */
np = CI.col(ip);
/* set u = (u 0)^T */
u(iq) = 0.0;
/* add ip to the active set A */
A(iq) = ip;
#ifdef TRACE_SOLVER
std::cerr << "Trying with constraint " << ip << std::endl;
print_vector("np", np, n);
#endif
l2a:/* Step 2a: determine step direction */
/* compute z = H np: the step direction in the primal space (through J, see the paper) */
compute_d(d, J, np);
update_z(z, J, d, iq);
/* compute N* np (if q > 0): the negative of the step direction in the dual space */
update_r(R, r, d, iq);
#ifdef TRACE_SOLVER
std::cerr << "Step direction z" << std::endl;
print_vector("z", z, n);
print_vector("r", r, iq + 1);
print_vector("u", u, iq + 1);
print_vector("d", d, n);
print_ivector("A", A, iq + 1);
#endif
/* Step 2b: compute step length */
l = 0;
/* Compute t1: partial step length (maximum step in dual space without violating dual feasibility */
t1 = inf; /* +inf */
/* find the index l s.t. it reaches the minimum of u+(x) / r */
for (k = me; k < iq; k++)
{
double tmp;
if (r(k) > 0.0 && ((tmp = u(k) / r(k)) < t1) )
{
t1 = tmp;
l = A(k);
}
}
/* Compute t2: full step length (minimum step in primal space such that the constraint ip becomes feasible */
if (std::abs(z.dot(z)) > std::numeric_limits<double>::epsilon()) // i.e. z != 0
t2 = -s(ip) / z.dot(np);
else
t2 = inf; /* +inf */
/* the step is chosen as the minimum of t1 and t2 */
t = std::min(t1, t2);
#ifdef TRACE_SOLVER
std::cerr << "Step sizes: " << t << " (t1 = " << t1 << ", t2 = " << t2 << ") ";
#endif
/* Step 2c: determine new S-pair and take step: */
/* case (i): no step in primal or dual space */
if (t >= inf)
{
/* QPP is infeasible */
// FIXME: unbounded to raise
return false;
}
/* case (ii): step in dual space */
if (t2 >= inf)
{
/* set u = u + t * [-r 1) and drop constraint l from the active set A */
u.head(iq) -= t * r.head(iq);
u(iq) += t;
iai(l) = l;
delete_constraint(R, J, A, u, p, iq, l);
#ifdef TRACE_SOLVER
std::cerr << " in dual space: "
<< f_value << std::endl;
print_vector("x", x, n);
print_vector("z", z, n);
print_ivector("A", A, iq + 1);
#endif
goto l2a;
}
/* case (iii): step in primal and dual space */
x += t * z;
/* update the solution value */
#ifdef TRACE_SOLVER
f_value += t * z.dot(np) * (0.5 * t + u(iq));
#endif
u.head(iq) -= t * r.head(iq);
u(iq) += t;
#ifdef TRACE_SOLVER
std::cerr << " in both spaces: "
<< f_value << std::endl;
print_vector("x", x, n);
print_vector("u", u, iq + 1);
print_vector("r", r, iq + 1);
print_ivector("A", A, iq + 1);
#endif
if (t == t2)
{
#ifdef TRACE_SOLVER
std::cerr << "Full step has taken " << t << std::endl;
print_vector("x", x, n);
#endif
/* full step has taken */
/* add constraint ip to the active set*/
if (!add_constraint(R, J, d, iq, R_norm))
{
iaexcl[ip] = false;
delete_constraint(R, J, A, u, p, iq, ip);
#ifdef TRACE_SOLVER
print_matrix("R", R, n);
print_ivector("A", A, iq);
#endif
for (i = 0; i < m; i++)
iai(i) = i;
for (i = 0; i < iq; i++)
{
A(i) = A_old(i);
iai(A(i)) = -1;
u(i) = u_old(i);
}
x = x_old;
goto l2; /* go to step 2 */
}
else
iai(ip) = -1;
#ifdef TRACE_SOLVER
print_matrix("R", R, n);
print_ivector("A", A, iq);
#endif
goto l1;
}
/* a patial step has taken */
#ifdef TRACE_SOLVER
std::cerr << "Partial step has taken " << t << std::endl;
print_vector("x", x, n);
#endif
/* drop constraint l */
iai(l) = l;
delete_constraint(R, J, A, u, p, iq, l);
#ifdef TRACE_SOLVER
print_matrix("R", R, n);
print_ivector("A", A, iq);
#endif
s(ip) = CI.col(ip).dot(x) + ci0(ip);
#ifdef TRACE_SOLVER
print_vector("s", s, mi);
#endif
goto l2a;
}